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    How Does Capital Affect Bank PerformanceDuring Financial Crises?

    Allen N. Berger

    University of South Carolina, Wharton Financial Institutions Center, and CentER Tilburg University

    Christa H.S. Bouwman

    Case Western Reserve University and Wharton Financial Institutions Center

    March 2011

    The recent financial crisis has raised important issues regarding bank capital. Various reform proposalsinvolve requiring banks to hold more capital. But assessing these proposals requires an understanding of how

    capital affects bank performance. Existing theories produce conflicting predictions regarding the effect ofcapital on bank performance during normal times and have little to say about the effect during financial crises.This paper addresses these issues empirically by formulating and testing hypotheses regarding the effect ofcapital on three dimensions of bank performance survival, market share, and profitability during financialcrises and normal times. We distinguish between two banking crises and three market crises that occurred inthe U.S. over the past quarter century. We have two main results. First, capital helps banks of all sizes duringbanking crises. Higher capital helps these banks increase their probability of survival, market share, andprofitability during such crises. Second, higher capital improves the performance of small banks in all three

    dimensions during market crises and normal times as well, but the effect on medium and large banks duringthese periods is less pronounced. Overall, our results suggest that capital is important for small banks at alltimes and is important for medium and large banks primarily during banking crises.

    C d il M S h l f B i U i i f S h C li 1705 C ll S C l bi

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    C t t d t il M S h l f B i U i it f S th C li 1705 C ll St t C l bi

    1. Introduction

    The recent financial crisis has raised fundamental issues about the role of bank equity capital. Various

    proposals have been put forth which argue that banks should hold more capital (e.g., Kashyap, Rajan, and

    Stein 2009, Hart and Zingales 2009, Acharya, Mehran, and Thakor 2010, Basel III (2010)). 1

    Theories predict that the effect of bank capital on any of these three dimensions of performance could

    be positive or negative. As a prelude to a more extensive discussion of this in the next section, here we briefly

    present the main arguments. Consider survival probability first. Holding fixed the banks asset and liability

    portfolios higher capital mechanically implies a higher survival probability (also suggested by monitoring-

    An underlying

    premise in all of these proposals is that there are externalities due to the safety net provided to banks and thus

    social efficiency can be improved by requiring banks to operate with more capital, especially during financial

    crises. Bankers, however, have typically argued that being forced to hold more capital would jeopardize their

    performance, especially profitability, and the argument that higher capital need not be beneficial has found

    some support in the academic literature as well (e.g., Calomiris and Kahn 1991). The issue of what effects

    capital has on bank performance, and how these effects might differ between crises and normal times, thus

    boils down to an empirical question, and one that we confront in this paper. In particular, the goal of this

    paper is to empirically examine the effects of bank capital on three dimensions of bank performance

    probability of survival, market share, and profitability during different types of financial crises and normal

    times.

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    This discussion suggests that although a substantial body of theoretical research is available, these

    theories focus on different forces and hence produce conflicting implications, pointing strongly to the need for

    empirical mediation. Understanding the effects of capital is interesting in its own right, but is particularly

    compelling during times of stress, such as financial crises. While the papers discussed above focus on the role

    capital plays during normal times, we examine both crises and normal times. We therefore need to extrapolate

    these theoretical results to the crisis context in a manner which is still consistent with the intuition of the

    theories, which we do in the next section. For each of the three performance dimensions, we take our cue from

    the theories and formulate hypotheses that allow us to assess whether capital helps or hurts bank performance.

    These hypotheses are then tested using data on virtually every U.S. bank from 1984:Q1 until 2009:Q4.

    We test our survival hypotheses using logit regressions. We regress the log odds ratio of the

    probability of survival on the banks pre-crisis capital ratio interacted with a banking crisis dummy, a market

    crisis dummy, and a normal times dummy, plus a set of control variables. As discussed below, banking crises

    are those that originated in the banking sector, and market crises are those that originated outside banking in

    the financial markets. The interaction terms capture the effect of capital on survival during banking crises,

    market crises, and normal times, respectively. Moreover, we examine small banks (gross total assets or GTA

    up to $1 billion), medium banks (GTA exceeding $1 billion and up to $3 billion), and large banks (GTA

    exceeding $3 billion) as three separate groups, since the effect of capital likely differs by bank size (e.g.,

    Berger and Bouwman 2009) 2 Our results support the hypothesis that capital enhances the survival probability

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    normal times dummies mentioned above) and a set of control variables. Our results support the hypothesis

    that capital helps to increase market shares for banks of all sizes during banking crises and normal times, and

    for small banks also during market crises.

    To test our profitability hypotheses, we run regressions that are similar to the market share regressions

    except that we use the change in return on equity (ROE) during a crisis as the dependent variable. ROE is an

    appropriate profitability measure since both net income (the numerator) and equity (the denominator) reflect

    all of the banks on- and off-balance sheet activities.4

    We perform a variety of robustness checks. First, to check the sensitivity of the results to our

    definitions of various performance measures, we use alternative definitions of survival, market share, and

    profitability. Second, we use regulatory capital ratios instead of the equity-to-assets ratio to define capital.

    Third, we drop banks that are Too-Big-To-Fail from the large-bank sample to see if our large-bank

    conclusions are driven by the dominance of a few very large banks. Fourth, we use alternative cutoffs to

    separate medium and large banks to examine the sensitivity of our results to the manner in which banks are

    classified by size. Fifth, we measure pre-crisis capital ratios averaged over the four quarters before the crisis

    or one quarter before the crisis starts rather than averaging them over the eight quarters before the crisis. The

    purpose is to determine if the time period over which pre-crisis capital is defined affects our results Sixth

    Our results support the hypothesis that capital improves

    profitability for small banks at all times, for medium banks during market crises, and for large banks during

    banking and market crises.

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    banking crises. It helps banks of all sizes during such crises higher pre-crisis capital increases the odds of

    survival and enhances market share for banks of all sizes and it increases profitability for all but medium-sized

    banks during such crises. Second, small banks benefit in all respects from higher capital during market crises

    and normal times as well. For large and medium banks, higher capital improves only profitability during

    market crises and only market share during normal times. While the survival and market share results are

    highly robust, the profitability results are less so.

    The remainder of this paper is organized as follows. Section 2 develops the empirical hypotheses.

    Section 3 explains our empirical approach, describes the financial crises and normal times, describes all the

    variables and the sample, and provides summary statistics. Section 4 discusses the results of our empirical

    tests. Section 5 includes the robustness tests. Section 6 contains the additional analysis of listed entities.

    Section 7 concludes.

    2. Development of the empirical hypotheses

    In this section, we review existing theories to formulate our empirical hypotheses about the effects of bank

    capital on the survival probability, market share, and profitability of banks during crises and normal times.

    2.1. Survival

    Hypothesis 1a: Capital enhances the banks survival probability during crises and normal times

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    these papers is that higher bank capital induces higher levels of borrower monitoring by the bank, thereby

    reducing the probability of default or otherwise improving the banks survival odds indirectly by increasing

    the surplus generated by the bank-borrower relationship.6

    A different strand of the theoretical literature suggests that banks with higher capital may experience

    lower survival odds. Calomiris and Kahn (1991) show that a capital structure with sufficiently high demand

    deposits (and by implication lower equity) leads to more effective monitoring of bank managers by informed

    depositors and hence a smaller likelihood of bad investment decisions. This suggests that a bank with higher

    capital (and consequently lower deposits) may face a higher probability of bad loans and hence loan default,

    which may result in a lower survival probability. This paper has spawned a sizeable literature on the market

    discipline role of bank leverage (see Freixas and Rochet (2008) for an overview).

    In their screening-based theory of banking with

    behaviorally-biased agents, Coval and Thakor (2005) show that a minimum amount of capital may be essential

    to the very viability of the bank. The asset-substitution-moral-hazard theories argue that government

    guarantees cause shareholders to prefer low capital and excessive risk to increase the value of the deposit

    insurance put option (Merton 1977), and that banks with more capital will optimally choose less risky

    portfolios (see the overview of this literature in Freixas and Rochet 2008).

    7

    Thus, some theories predict that higher bank capital should lead to a higher survival probability for the

    bank, whereas others suggests that higher capital may worsen the portfolio choices and liquidity of banks and

    hence lead to a lower survival likelihood

    8

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    resolving problem institutions based on their capital ratios.9

    2.2. Market share

    Hypothesis 2a: Capital enhances the banks market share during crises and normal times.

    Hypothesis 2b: Capital diminishes the banks market share during crises and normal times.

    The theories on the effect of capital on market share also produce opposing predictions. In the banking models

    of Holmstrom and Tirole (1997), Allen and Gale (2004), Boot and Marinc (2008), Allen, Carletti, and

    Marquez (forthcoming), and Mehran and Thakor (forthcoming), banks derive a competitive advantage from

    higher capital. These papers imply that higher-capital banks will end up with higher market shares.

    In contrast, there is also a literature that focuses on the relationship between leverage and market share

    for nonfinancial firms (e.g., Brander and Lewis 1986, Lyandres 2006). This literature shows that more highly-

    levered firms will be more aggressive in their product-market-expansion strategies and hence suggests that

    capital and market share will be negatively correlated.

    The literature discussed above does not focus on crises, so the predictions of these papers should be

    viewed as applying during normal times. However, it is plausible to argue that the competitive advantage of

    capital is more pronounced during crises, particularly during banking crises. There are several reasons for this.

    First, the banks customers may be more cognizant of the banks capital during a crisis, making it easier for

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    2.3. Profitability

    Hypothesis 3a: Capital enhances the profitability of the bank during crises and normal times.

    Hypothesis 3b: Capital diminishes the profitability of the bank during crises and normal times.

    The theoretical literature also offers conflicting predictions about how capital should affect bank profitability.

    One strand of theory predicts that higher capital enhances profitability. As pointed out above, Holmstrom and

    Tirole (1997), Allen, Carletti, and Marquez (forthcoming), and Mehran and Thakor (forthcoming) show that

    high bank capital increases the total surplus generated in the bank-borrower relationship. Assuming that banks

    keep a large enough portion of the surplus, higher capital will lead to higher bank profitability. Moreover, if

    the ratio of the surplus generated by high- versus low-capital banks is higher during crises, it follows that high-

    capital banks will be able to improve their profitability during crises relative to low-capital banks.10

    In contrast, another strand of theory predicts that higher capital should lead to reduced profitability.

    The most obvious argument here goes back to Modigliani and Miller (1963), who show that higher capital

    mechanically leads to lower ROE. Moreover, the literature on the disciplining role of debt (e.g., Calomiris and

    Kahn 1991) suggests that higher leverage improves the banks asset choice and hence its profitability. Thus,

    banks with higher capital have lower-quality assets. If these assets deteriorate in value more during a crisis

    than do higher-quality assets, then banks with higher capital may suffer bigger declines in profitability during

    crises than their lower-capital counterparts

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    dominant empirically. This is because what we may be picking up in the data is the net effect of opposing

    forces identified by different theories.

    3. Methodology

    This section first explains our empirical approach and describes the financial crises and normal times. It then

    explains the performance measures. Next, it discusses the key exogenous variables and the control variables.

    Finally, it describes the sample and provides summary statistics.

    In our empirical approach, we examine the effect of capital (and other bank conditions) measured prior

    to a crisis on bank performance during a crisis. We measure capital before a crisis for two reasons. First,

    since it is not known a priori when a crisis will strike, the interesting question is whether banks that have

    higher capital going into a crisis benefit from these higher capital ratios during a crisis. That is, we want to

    know whether higher pre-crisis capital ratios result in better performance during a crisis. Second, it mitigates

    endogeneity concerns because lagged capital and current performance are less likely to be jointly determined.

    3.1. Empirical approach and description of financial crises and normal times

    Our analyses focus on crises that occurred between 1984:Q1 and 2009:Q4. They include two banking crises

    (crises that originated in the banking sector) and three market crises (crises that originated outside banking in

    the financial markets) The banking crises are the credit crunch of the early 1990s (1990:Q1 1992:Q4) and

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    quarter after the crisis; see Section 3.2). Our market share analyses link pre-crisis capital to the banks

    percentage change in market share (see Section 3.3), defined as the banks average market share during a crisis

    minus its average share over the eight quarters before the crisis, normalized by its average pre-crisis market

    share and multiplied by 100. Similarly, our profitability analyses link pre-crisis capital to the banks change in

    profitability (see Section 3.4), defined as the banks average ROE during a crisis minus its ROE over the eight

    quarters before the crisis.

    We expect the effect of capital to be more positive during financial crises than during normal times.

    While we highlight above how we examine the effect of (average) pre-crisis capital on bank performance

    during a crisis, we still have to address how we measure normal times. A nave approach would be to

    simply view all non-crisis quarters as such. However, if so, it is not clear then how to examine the effect of

    capital on bank performance during normal times. To ensure that we analyze actual crises and normal times in

    a comparable way, we create fake crises to represent normal times. In essence, these fake crises act as a

    control group. To construct these fake crises, we use the two longest time periods between actual financial

    crises over our entire sample period. These periods are between the credit crunch and the Russian debt crisis,

    and between the bursting of the dot.com bubble and the subprime lending crisis. In each case, we take the

    entire period between the crises, designate the first eight quarters as pre-crisis and the last eight quarters as

    post-crisis and the remaining quarters in the middle as the fake crisis. This treatment of the first eight

    quarters as pre-crisis is consistent with our analysis of the banking and market crises We thus end up with a

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    (1)

    where measures whether bank i survived crisis or normal time period t (see Section 3.2).

    is the banks average capital ratio over the eight quarters before crisis or normal time period t

    (see Section 3.5). , , and are dummy variables that equal 1 if t is a

    banking crisis, market crisis, or normal time period, respectively, and 0 otherwise. is a set of control

    variables measured over the pre-crisis period (see Section 3.6).

    To examine the impact of capital on a banks market share and profitability during banking crises,

    market crises, and normal times, we use the following regression specifications:

    (2)

    (3)

    where is the percentage change in bankis aggregate market share (see Section 3.3) and

    is the change in bankis profitability (see Section 3.4). To mitigate the influence of outliers, both

    variables are winsorized at the 3% level.13 is as defined above. is a set of control

    variables over the pre-crisis period (see Section 3.6).

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    split the sample into small banks (gross total assets (GTA) up to $1 billion), medium banks (GTA exceeding

    $1 billion and up to $3 billion), and large banks (GTA exceeding $3 billion) and run all regressions separately

    for these three sets of banks. All dollar values are in 2009:Q4 terms. Our definition of small banks conforms

    to the usual notion of community banks. The $3 billion cutoff for GTA divides the remaining observations

    roughly in half.14

    3.2. Definition of survival

    To measure whether a bank survived a crisis, we require that the bank was not acquired and did not fail during

    the crisis. Specifically, we use SURV, a dummy that equals 1 if the bank is in the sample one quarter before

    such a crisis started and is still in the sample one quarter after the crisis, and 0 otherwise.15,16

    3.3. Definition of market share

    While most of the literature focuses on the role of capital in traditional banks that engage only in on-

    balance-sheet activities, several papers highlight the importance of banks off-balance sheet activities (Boot,

    Greenbaum, and Thakor 1993, Holmstrom and Tirole 1997, Kashyap, Rajan, and Stein 2002). We therefore

    measure a banks competitive position as the banks market share of overall bank liquidity creation. Liquidity

    creation is a superior measure of bank output since it is the only measure based on all the banks on- and off-

    balance sheet activities 17

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    and normal times, we define each banks percentage change in liquidity creation market share, %LCSHARE,

    as the banks average market share during a crisis minus its average market share over the eight quarters

    before the crisis, normalized by its average pre-crisis market share and multiplied by 100.

    3.4. Definition of profitability

    We measure a banks profitability using the banks return on equity (ROE), i.e. net income divided by

    stockholders equity.19 This is a comprehensive profitability measure, since banks may have substantial off-

    balance sheet portfolios. Banks must allocate capital against every off-balance sheet activity in which they

    engage. Hence, net income and equity both reflect the banks on- and off-balance sheet activities.20

    To examine whether a bank improves its profitability during banking crises, market crises, and normal

    times, we focus on the change in ROE (ROE), defined as the banks average profitability during these crises

    minus the banks average ROE over the eight quarters before these crises.

    3.5. Key exogenous variables

    The key exogenous variables are three bank capital ratio-crisis interaction terms: EQRAT * BNKCRIS,

    EQRAT * MKTCRIS, and EQRAT * NORMALTIME. EQRAT is the ratio of equity capital to gross total

    assets, averaged over the eight quarters before the crisis.21 BNKCRIS, MKTCRIS, and NORMALTIME are

    as defined in Section 3 1

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    otherwise.

    Credit risk, defined as the banks Basel I risk-weighted assets divided by gross total assets, is used as a

    measure of bank risk taking (e.g., Logan 2001). Risk-weighted assets, a weighted average of the banks assets

    and off-balance-sheet activities designed to measure credit risk, is the denominator in the Basel I risk-based

    capital requirements. Since these requirements only became effective in December 1990 and, hence, were

    only reported in Call Reports from that moment onward, we use a Federal Reserve Board program to construct

    risk-weighted assets from the beginning of our sample period. Banks with riskier portfolios (i.e. higher risk-

    weighted assets relative to gross total assets) may be less likely to survive crises. They may also find it harder

    to improve their market shares and profitability during crises. We therefore interact the credit risk variable

    with the three crisis dummies, and expect the coefficients on the banking and market crisis interaction terms to

    be negative in all regressions.

    Bank size is controlled for by including lnLC, the log of liquidity creation, in all regressions. 22 In

    addition, we run regressions separately for small, medium, and large banks. Bank size is expected to have a

    positive effect on the probability of survival, since it is well-known that larger banks have higher survival odds

    than smaller banks. In contrast, the coefficient on bank size is expected to be negative and significant for all

    size classes in the market share regressions, since the law of diminishing marginal returns suggests that it will

    be more difficult for bigger banks (that already have larger market shares) to improve their market shares. It is

    unclear whether bank size will have a significant effect on banks ability to improve their profitability

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    because it provides greater access to internal capital markets and provides potential protection against the

    vagaries of market financing.

    We control for local market power by including HHI, the bank-level Herfindahl-Hirschman index of

    deposit concentration for the local markets in which the bank is present. 23 From 1984-2004, we define the

    local market as the Metropolitan Statistical Area (MSA) or non-MSA county in which the offices are located.24

    After 2004, we use the new local market definitions based on Core Based Statistical Area (CBSA) and non-

    CBSA county.25

    The survival regressions also include a measure of profitability because banks that are more profitable

    before the crisis may be more likely to survive crises. We use a banks return on assets, ROA, for this

    purpose. The reason to use ROA instead of ROE is that we want to measure the effect of capital on banks

    ability to survive crises and avoid using control variables that include capital.

    The larger is HHI, the greater is a banks market power. Since more market power should

    help a bank survive, the coefficient on HHI is expected to be positive in the survival regressions for banks of

    all sizes. More market power likely makes it harder to improve market share since regulatory approval for

    acquisitions will be more difficult to obtain. The coefficient on HHI is therefore likely to be negative in the

    market share regressions. Since higher market power increases the profitability of local loans and deposits,

    more market power should make it easier to improve profitability. Thus, the coefficient on HHI in the

    profitability regressions is expected to be positive.

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    of capital on survival have 46,107 small-bank, 1,599 medium-bank, and 1,194 large-bank observations.

    Analyses that focus on the effect of capital on market share and profitability have 52,107 small-bank, 1,911

    medium-bank, and 1,382 large-bank observations.26

    Table 1 contains summary statistics on the regression variables. The sample statistics are shown for

    banking crises, market crises, and normal times. All financial values are put into real 2009:Q4 dollars (using

    the implicit GDP price deflator) before size classes are constructed.

    4. Main regression results

    In this section, we discuss the main empirical results.

    4.1. Does capital affect the banks ability to survive during crises and normal times?

    Table 2 Panel A presents the survival findings for small, medium, and large banks. Two main results are

    apparent. First, higher capital helps banks in all size classes to improve the probability of surviving banking

    crises. Second, higher capital also helps small banks improve their odds of survival during market crises and

    normal times. These results generally support the hypothesis that capital helps banks survive.

    These findings have sensible economic interpretations. Capital is the main line of defense against

    negative shocks for small banks, since they have limited (and relatively costly) access to the financial market

    in the event of unanticipated needs Hence higher capital enhances the probability of survival for such banks

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    (e.g., federal funds) that itself is unlikely to be adversely impacted by a market crisis, capital may not be

    critical for these banks to survive market crises.

    To judge the economic significance of our findings, Table 2 Panels B, C, and D show the predicted

    probabilities of non-survival. The top part of each panel shows the average capital ratio and the average

    capital ratio plus or minus one standard deviation of small, medium, and large banks over the eight quarters

    before banking crises, market crises, and normal times. The bottom part of each panel shows the predicted

    probability of not surviving banking crises, market crises, and normal times at these capital ratios. A small,

    medium, or large bank with an average capital ratio (10.00%, 8.76%, and 8.30%, respectively) had a

    probability of not surviving banking crises of 0.61%, 0.55%, and 0.12%, respectively. Reducing capital by

    one standard deviation more than doubles these probabilities of non-survival. Similarly, increasing capital by

    one standard deviation reduces the probabilities of non-survival by more than one half for all size classes. The

    corresponding probabilities for market crises and normal times are generally higher.27

    Turning to the control variables, we find that the coefficients generally have the predicted signs. As

    expected, being part of a bank holding company, greater market power, and higher profitability helps banks

    survive. Banks that held more credit risk before banking and market crises are less likely to survive

    (significant for small banks; for medium banks only before banking crises). Bank size has no significant effect

    on medium and large banks ability to survive. Among small banks, larger banks are less likely to survive,

    which is surprising

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    shares during market crises.28

    We can again interpret these results in the context of the theories discussed earlier. Note that capital is

    essential to survival for small banks, as discussed earlier. Moreover, these banks engage largely in

    relationship lending, and long-lasting bank-borrower relationships are crucial for relationship banking to create

    value.

    Capital does not appear to produce such benefits during market crises for

    medium and large banks. Somewhat surprisingly, medium banks with higher capital ratios seem to lose

    market share during market crises. These results generally support the hypothesis that capital helps banks to

    improve their market shares.

    29 This means that relationship borrowers will tend to gravitate toward high-capital banks, since higher

    capital leads to a higher survival probability for small banks at all times (see Section 4.1). 30

    To judge the economic significance of these results focus first on the effect of capital during banking

    Thus, it is not

    surprising that higher capital benefits small banks in terms of gaining market share at all times. During

    banking crises and normal times, capital also helps improve the market shares of medium and large banks. In

    contrast, during market crises, capital seems to hurt the market shares of medium banks (no obvious

    interpretation) and does not significantly affect large banks, possibly because it is relatively easy for these

    banks to turn to the discount window and the interbank market both of which may not experience stress

    during market crises to ensure unruptured relationships with their borrowers during such crises. This means

    that while capital may offer large banks a benefit during market crises, this benefit may be no greater than that

    before such crises.

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    Turning to the control variables, we find that banks with higher pre-crisis credit risk are generally less

    likely to improve their market shares during crises. The reason may be similar to the argument given above

    for capital: safer banks create more surplus and therefore are more likely to increase their market shares.

    Among banks of all size classes, the coefficient on bank size is negative and significant, likely because it is

    harder for larger banks to increase their percentage market share. Being part of a bank holding company helps

    to improve market share (significant for small and medium banks). Among small banks, the ones with greater

    market power increase their market shares less, probably because these banks tend to operate locally and

    regulators do not approve mergers that increase their market shares significantly. This does not hold for

    medium and large banks, since they operate more on a national or international basis.

    4.3. Does capital affect bank profitability during crises and normal times?

    Table 4 contains the results of regressing the change in profitability (ROE) during crises on the banks pre-

    crisis capital ratio plus control variables. The setup of the table is similar to the previous one. As before, t-

    statistics are based on robust standard errors clustered by bank.

    We again find two main results. First, high-capital banks of all sizes improve their profitability during

    banking crises (not significant for medium banks) and market crises. Second, capital also enhances theprofitability of small banks during normal times. These results generally support the hypothesis that capital

    improves bank profitability

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    increase in EQRAT would lead to a 0.041, 0.061, and 0.125 standard deviation change in for small,

    medium, and large banks, respectively, during such crises (not shown for brevity). The corresponding figures

    for EQRAT * MKTCRIS and EQRAT * NORMALTIME are (0.076, 0.078, and 0.184) and (0.085, 0.026, and

    0.011), respectively. These results seem less economically significant than the survival and market share

    results.

    The control variables generally have the expected signs. Banks that operate with higher credit risk

    before banking and market crises find it harder to improve their profitability during such crises. Bank size has

    no significant impact on banks ability to improve their profitability. Bank holding company status increases

    profitability for small banks only. Higher HHI increases profitability not just for small banks but also for

    medium banks.

    5. Robustness checks

    This section presents a number of checks to establish the robustness of our results. First, we use alternative

    specifications of survival, market share, and profitability. Second, we use regulatory capital ratios instead of

    the equity-to-assets ratio. Third, we drop Too-Big-To-Fail banks from the large-bank sample. Fourth, we use

    alternative cutoffs separating medium and large banks. Fifth, we measure pre-crisis capital ratios alternativelyone quarter before the crisis starts or averaged over the four quarters before the crisis. Sixth, we deal with the

    potential endogeneity issues related to capital by using an instrumental variable approach Our survival and

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    Table 5 Panel A1 shows the results. As can be seen, the coefficients and significance levels are

    similar to those shown in Table 2, except that based on this alternative definition, the effect of capital on largebanks ability to survive banking crises is no longer significant. Thus, our survival results do not seem to be

    driven appreciably by the choice of time window.

    Our main competitive position results are based on %MKTSHARE, a banks liquidity creation market

    share. As a robustness check, we now use %MKTSHARE_alt, a banks market share of aggregate gross total

    assets (GTA). GTA is a traditional measure of size that focuses on the banks on-balance sheet activities.

    GTA market share is calculated as the banks gross total assets divided by the industrys gross total assets.

    The main shortcoming of this measure is that it ignores off-balance sheet activities and treats all assets

    identically, i.e., it neglects the qualitative asset transformation nature of the banks activities (e.g.,

    Bhattacharya and Thakor 1993, Kashyap, Rajan, and Stein 2002). For consistency, we also use lnGTA, the

    log of GTA, instead of lnLC as a size control in these regressions.

    Table 5 Panel A2 shows that based on GTA market share, small banks are able to improve their

    market shares at all times, while medium and large banks improve their market shares only during banking

    crises. The difficult-to-explain finding that medium banks with higher capital ratios lose market share during

    market crises is still present, but the effect of capital on market share during normal times for medium andlarge banks has disappeared. Thus, the results confirm the small-bank results and the banking crisis (not

    market crisis) results for medium and large banks shown in Table 3

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    5.2. Use regulatory capital ratios

    The main results highlight the benefits of higher capital ratios. One may wonder to what extent these resultsare specific to our choice of the definition of capital, EQRAT, the ratio of equity capital to assets. To examine

    this issue, we rerun our regressions using regulatory capital ratios.

    Basel I introduced two risk-based capital ratios, the Tier 1 and Total risk-based capital ratios. Since

    these ratios only became fully effective as of December 1990, we use each banks ratio of equity capital to

    GTA before this date and its Tier 1 risk-based capital ratio from that moment onward. We obtain very similar

    results when we use the Total risk-based capital ratio instead of the Tier 1 capital ratio. Prior to 1996, all

    banks with assets over $1 billion had to report this information, but small banks only had to report their risk-

    based capital positions if they believed that their capital was less than eight percent of adjusted total assets. In

    all these cases, we use a Federal Reserve Bank program to reconstruct what those banks risk-based capital

    ratios are based on (publicly-available) Call Report data.

    Table 5 Panel B shows the results.31

    We also ran all the robustness checks presented in the rest of this section using regulatory capital and

    obtain results that are very similar to the main survival market share and profitability results Nonetheless we

    Clearly, for small and large banks, we obtain significance in

    exactly the same cases as before (see Tables 2 4). For medium banks, the survival and profitability results

    are similar, but the market share results are less significant (capital does not help these banks improve their

    market shares during banking crises).

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    for large banks while excluding the TBTF banks. Since no official definition of TBTF exists, we use two

    alternative definitions. First, in every quarter, we deem all banks with GTA exceeding $50 billion to be TBTF.Second, we classify the 19 largest banks in each period as TBTF. This definition is inspired by the

    governments disclosure in April 2009 that the 19 largest banks had to undergo stress tests, and would be

    assisted with capital injections if they could not raise capital on their own. This effectively made them TBTF.

    Table 5 Panels C1 and C2 contain the results for large banks excluding the TBTF banks based on the

    two alternative definitions. The coefficients are bigger than those presented in the main tests in all but one

    case and significance is found in similar cases. Both sets of results suggest that the presence of TBTF banks

    weakened our main results to some extent, but leave our main conclusion unchanged.

    5.4. Use alternative size cutoffs

    In our main analyses, small banks have GTA up to $1 billion; medium banks have GTA between $1 and $3

    billion; large banks have GTA exceeding $3 billion. As explained above, our small-bank definition captures

    community banks, while the remaining observations were split roughly in half by choosing a $3 billion cutoff

    (see also Berger and Bouwman 2009). One may wonder to what extent the medium and large bank results are

    driven by our choice of the $3 billion cutoff. We reran our analyses using $5 billion and $10 billion cutoffs

    between medium and large banks, which reclassify some large banks as medium banks.

    Table 5 Panels D1 and D2 show the results for medium and large banks using these alternative

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    5.5. Measure capital ratios at alternative times before the crisis

    Our main results are based on regression specifications which include every banks capital ratio averaged overthe eight quarters before a crisis. The advantage of using eight-quarter averages is that such averages are not

    very sensitive to the effects of outliers. As robustness checks, we rerun our regressions while measuring bank

    capital averaged over the four quarters before a crisis or measuring it the quarter before a crisis.

    Table 5 Panels E1 and E2 contain the results. Clearly, based on these two alternative capital

    measures, the survival and market share results are similar to the main results. The profitability results,

    however, are somewhat weaker. When capital is averaged over the four quarters before the crisis, capital helps

    to improve small banks profitability during banking crises, but the effect is no longer significant (t-statistic

    1.52). When capital is measured at the end of the quarter before the crisis, high-capital small banks are not

    able to improve their profitability relative to low-capital banks at any time, and high-capital large banks do not

    improve their profitability during banking crises.32

    5.6. Use an instrumental variable analysis

    The analyses presented so far suggest that capital helps banks of all sizes during banking crises, and improves

    the performance of small banks during market crises and normal times as well. However, a potential

    endogeneity issue clouds the interpretation of our results. The theories suggest a causal link from capital to

    performance But we know that in practice capital is an endogenous choice variable for a bank so the banks

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    instruments.33

    This instrumentation strategy assumes that SENIORS and EFF-TAX are correlated with the amount of

    capital, but do not directly affect performance. Both variables, used by Berger and Bouwman (2009) as

    instruments for capital, seem to meet these conditions. To see why, consider SENIORS first. Seniors own

    larger equity portfolios than the average family. Furthermore, using U.S. data, Coval and Moskowitz (1999)

    document that investors have a strong preference for investing close to home. They find that this preference is

    greater for firms that are smaller, more highly levered, and those that produce goods that are not traded

    internationally. In combination, this evidence suggests that banks particularly small and medium banks

    that operate in markets with more seniors have easier access to equity financing and hence, will operate with

    higher capital ratios (see Berger and Bouwman 2009 for empirical evidence). We calculate the fraction of

    seniors using county- and MSA-level population data from the 1990 and 2000 decennial Census.

    We employ different instruments for banks of different sizes for reasons explained below.

    Specifically, we use SENIORS, the fraction of seniors (people aged 65 and over) in the market in which a

    bank is active, interacted with the three crisis dummies as instruments for medium and small banks; and EFF-

    TAX, the effective state income tax rate a bank has to pay, interacted with the three crisis dummies as

    instruments for large banks.

    While SENIORS can be used for small and medium banks, it is not as attractive for large banks

    because these banks are unlikely to be locally-based when it comes to raising equity. For this reason, we use

    EFF-TAX for large banks Since interest on debt is tax-deductible while dividend payments are not banks

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    for medium and large banks, suggesting that our original analyses were appropriate for these banks. However,

    we do find evidence of endogeneity for small banks and therefore perform instrumental variable regressions

    only for those banks.

    Since we have three endogenous variables, we run three first-stage regressions. In each, we regress

    EQRAT interacted with one of the three crisis dummies on all the exogenous variables used before plus the

    three instruments (SENIORS interacted with the three crisis dummies). Importantly, when EQRAT *

    BNKCRIS is the endogenous variable, the coefficient on the corresponding instrument (SENIORS *

    BNKCRIS) is positive and highly significant, and we obtain similar results for the other endogenous variables

    (not shown for brevity).

    In the second-stage regressions, we regress bank performance on all the exogenous variables and the

    predicted values from the first stage. Table 5 Panel F2 shows the second-stage instrumental variable

    regressions for small banks. Using an instrument for small banks capital, we find that capital helps these

    banks survive banking crises only, improve their market shares at all times (not significant during normal

    times: t-statistic 1.59), and improve their profitability during market crises and normal times (surprisingly, a

    negative effect during banking crises). Thus, most of our earlier results hold up in our instrumental variable

    analysis, and the analysis broadly confirms our main results.

    6 Comparing the effects of book and market capital during crises and normal times

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    helps especially during banking crises), except that the relationship between book capital and listed entity

    survival is likely weaker since many of the listed entities may be Too-Big-To-Fail. The listed entity results are

    likely stronger based on market capital (than on book capital) because of their forward-looking nature.

    For this analysis, we include listed banks and listed one-bank-holding companies, and we aggregate

    the data of all the banks in a listed multi-bank-holding company. Book capital for the listed entity,

    EQRAT_listed, is calculated as before.35

    Table 6 shows the results based on book and market capital. As expected, our listed-entity results

    support our large-bank findings in that capital helps listed entities in particular during banking crises.

    Specifically, we find that those with higher capital ratios are more likely to survive banking crises (based on

    MKTRAT_listed only; as expected, this result is not significant based on EQRAT_listed); increase their

    market shares during banking crises (based on both capital measures; also significant during market crises

    based on EQRAT_listed); and increase their profitability during banking crises (based on MKTRAT_listed

    only) and market crises (based on both capital measures).

    Each listed entitys pre-crisis market capital ratio, MKTRAT_listed,

    is calculated as the listed entitys market value of equity (i.e., the number of shares outstanding multiplied by

    the share price) divided by its assets in market value terms (i.e., the book value of liabilities plus the market

    value of equity), averaged over the eight quarters before the crisis. We rerun regressions (1) (3) using listed-

    entity variables (except that we leave out the BHC dummy because almost all of these entities are BCHs).

    Also as expected the results are strongest based on market capital ratios Nonetheless we present the

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    a significant bias in favor of finding favorable effects of capital. By presenting both book-value and market-

    value analyses, we can provide greater confidence in the robustness of our results.

    7. Conclusion

    This paper aims to help a recent debate on whether banks should hold more capital. Existing theories produce

    conflicting predictions regarding the effect of capital on bank performance during normal times and have little

    to say about the effect during financial crises. We formulate and test hypotheses regarding the effect of bank

    capital on bank performance (survival probability, market share, and profitability) during financial crises and

    normal times. Our two main results are as follows. First, capital enhances the performance of all sizes of

    banks during banking crises. Second, during normal times and market crises, capital helps only small banks

    unambiguously in all performance dimensions; it helps medium and large banks improve only profitability

    during market crises and only market share during normal times. Our survival and market share findings are

    generally robust, and our profitability results are less so.36

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    Appendix I: Description of the financial crises

    This Appendix describes the two banking crises and the three market crises that occurred in the U.S between

    1984:Q1 and 2008:Q4.

    Two banking crises

    Credit crunch (1990:Q1 1992:Q4): During the first three years of the 1990s, bank commercial and industriallending declined in real terms, particularly for small banks and for small loans. The ascribed causes of the

    credit crunch include a fall in bank capital from the loan loss experiences of the late 1980s (e.g., Peek and

    Rosengren 1995), the increases in bank leverage requirements and implementation of Basel I risk-based capital

    standards during this time period (e.g., Hancock, Laing, and Wilcox 1995, Thakor 1996), an increase in

    supervisory toughness evidenced in worse examination ratings for a given bank condition, and reduced loan

    demand because of macroeconomic and regional recessions (e.g., Bernanke and Lown 1991). The existing

    research provides some support for each of these hypotheses.

    Subprime lending crisis (2007:Q3 2009:Q4): The subprime lending crisis has been characterized by turmoilin financial markets as banks have experienced difficulty in selling loans in the syndicated loan market and in

    securitizing loans. The supply of liquidity by banks dried up, as did the provision of liquidity in the interbank

    market. Many banks experienced substantial losses in capital. Massive loan losses at Countrywide resulted in

    a takeover by Bank of America. Bear Stearns suffered a fatal loss of confidence among its financiers and was

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    to acquire lesser-capitalized peers. For example, PNC Bank used TARP funds to acquire National City Bank,

    and Bank of America bought Merrill Lynch. In all, the Treasury invested over $300 billion in almost 700

    financial institutions (as well as over $80 billion in the automobile industry). During 2009, 140 U.S. banks

    failed, and the FDIC Bank Insurance Fund fell into a deficit position. By the first quarter of 2010, much of the

    TARP funds invested in financial institutions had been repaid, and order had been restored to most of the

    financial markets, although small banks continued to fail at a high rate.

    Three market crises

    Stock market crash (1987:Q4): On Monday, October 19, 1987, the stock market crashed, with the S&P500index falling about 20%. During the years before the crash, the level of the stock market had increased

    dramatically, causing some concern that the market had become overvalued.37

    Russian debt crisis / LTCM bailout (1998:Q3 1998:Q4): Since its inception in March 1994, hedge fundLong-Term Capital Management (LTCM) followed an arbitrage strategy that was avowedly market

    neutral, designed to make money regardless of whether prices were rising or falling. When Russia defaulted

    A few days before the crash,

    two events occurred that may have helped precipitate the crash: legislation was enacted to eliminate certain tax

    benefits associated with financing mergers; and information was released that the trade deficit was above

    expectations. Both events seemed to have added to the selling pressure and a record trading volume on Oct. 19,

    in part caused by program trading, overwhelmed many systems.

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    Bursting of the dot.com bubble and Sept. 11 terrorist attack (2000:Q2 2002:Q3): The dot.com bubble was aspeculative stock price bubble that was built up during the mid- to late-1990s. During this period, many

    internet-based companies, commonly referred to as dot.coms, were founded. Rapidly increasing stock prices

    and widely available venture capital created an environment in which many of these companies seemed to

    focus largely on increasing market share. At the height of the boom, many dot.coms were able to go public

    and raise substantial amounts of money even if they had never earned any profits, and in some cases had not

    even earned any revenues. On March 10, 2000, the Nasdaq composite index peaked at more than double its

    value just a year before. After the bursting of the bubble, many dot.coms ran out of capital and were acquired

    or filed for bankruptcy (examples of the latter include WorldCom and Pets.com). The U.S. economy started to

    slow down and business investments began falling. The September 11, 2001 terrorist attacks may have

    exacerbated the stock market downturn by adversely affecting investor sentiment. By 2002:Q3, the Nasdaq

    index had fallen by 78%, wiping out $5 trillion in market value of mostly technology firms.

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    Appendix II: Construction of bank liquidity creation (Berger and Bouwman 2009)

    We calculate a banks dollar amount of liquidity creation using a three-step procedure, which is discussed below

    and illustrated in Table A-1.

    Step 1: All bank activities (assets, liabilities, equity, and off-balance sheet activities) are classified as liquid,

    semi-liquid, or illiquid. For assets, this is done based on the ease, cost, and time for banks to dispose of their

    obligations in order to meet liquidity demands. For liabilities and equity, this is done based on the ease, cost, and

    time for customers to obtain liquid funds from the bank. We follow a similar approach for off-balance sheet

    activities, classifying them based on functionally similar on-balance sheet activities. For all activities other than

    loans, this classification process uses information on both product category and maturity. Due to data restrictions,

    loans are classified entirely by category.

    Step 2: Weights are assigned to all the bank activities classified in Step 1. The weights are consistent with

    liquidity creation theory, which argues that banks create liquidity on the balance sheet when they transform illiquid

    assets into liquid liabilities. Positive weights are therefore applied to illiquid assets and liquid liabilities. Following

    similar logic, negative weights are applied to liquid assets and illiquid liabilities and equity, since banks destroy

    liquidity when they use illiquid liabilities to finance liquid assets. Weights of and - are used because liquidity

    creation is only half attributable to the source or use of funds alone.38

    Step 3: The activities as classified in Step 1 and as weighted in Step 2 are combined to construct Berger and

    An intermediate weight of 0 is applied to

    semi-liquid assets and liabilities. Weights for off-balance sheet activities are assigned using the same principles.

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    32

    Table A-1: Liquidity classification of bank activities and construction of the liquidity creation measureThis table explains the Berger and Bouwman (2009) methodology to construct their preferred liquidity creation measure that classifies loans by category andincludes off-balance sheet activities in three steps.

    Step 1: Classify all bank activities as liquid, semi-liquid, or illiquid. For activities other than loans, information on product category and maturity arecombined. Due to data limitations, loans are classified entirely by product category.

    Step 2: Assign weights to the activities classified in Step 1.

    ASSETS:Illiquid assets (weight = ) Semi-liquid assets (weight = 0) Liquid assets (weight = - )

    Commercial real estate loans (CRE) Residential real estate loans (RRE) Cash and due from other institutionsLoans to finance agricultural production Consumer loans All securities (regardless of maturity)Commercial and industrial loans (C&I) Loans to depository institutions Trading assetsOther loans and lease financing receivables Loans to state and local governments Fed funds soldOther real estate owned (OREO) Loans to foreign governmentsInvestment in unconsolidated subsidiariesIntangible assetsPremisesOther assets

    LIABILITIES PLUS EQUITY:

    Liquid liabilities (weight = ) Semi-liquid liabilities (weight = 0) Illiquid liabilities plus equity (weight = - )Transactions deposits Time deposits Subordinated debtSavings deposits Other borrowed money Other liabilitiesOvernight federal funds purchased EquityTrading liabilities

    OFF-BALANCE SHEET GUARANTEES (notional values):

    Illiquid guarantees (weight = ) Semi-liquid guarantees (weight = 0) Liquid guarantees (weight = - )Unused commitments Net credit derivatives Net participations acquiredNet standby letters of credit Net securities lentCommercial and similar letters of creditAll other off-balance sheet liabilities

    OFF-BALANCE SHEET DERIVATIVES (gross fair values):Liquid derivatives (weight = -)

    Interest rate derivativesForeign exchange derivativesEquity and commodity derivatives

    Step 3: Combine bank activities as classified in Step 1 and as weighted in Step 2 to construct the liquidity creation (LC) measure.

    LC = + * illiquid assets + 0 * semi-liquid assets * liquid assets+ * liquid liabilities + 0 * semi-liquid liabilities * illiquid liabilities

    * equity+ * illiquid guarantees + 0 * semi-liquid guarantees * liquid guarantees

    * liquid derivatives

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    35

    Table 1: Summary statistics on the regression variablesThis table contains means and standard deviations (in parentheses) on all the regression variables used to examine the effect of pre-crisis capital ratios on banks ability tosurvive crises, and improve their competitive positions and profitability during such crises. We distinguish between banking crises (the credit crunch of the early 1990s andthe recent subprime lending crisis), market crises (the 1987 stock market crash, the Russian debt crisis plus LTCM bailout in 1998, and the bursting of the dot.com bubbleplus September 11), and normal times (see Section 3).

    SURV, survival, is a dummy that equals 1 if the bank is in the sample one quarter before such a crisis started and is still in the sample one quarter after the crisis, and 0otherwise. %MKTSHARE, the change in market share, is measured as the banks average market share during a crisis minus its average market share over the eightquarters before the crisis, normalized by its pre-crisis market share and multiplied by 100. Market share is the banks liquidity creation (LC) as a fraction of total LC.

    PROF, the change in profitability, is measured as the banks average profitability during a crisis minus its average profitability over the eight quarters before the crisis.Profitability is ROE, net income divided by equity capital.

    All independent variables are measured as averages over the eight quarters prior to a crisis (except as noted). EQRAT is the equity capital ratio, calculated as equity capitalas a proportion of GTA. GTA equals total assets plus the allowance for loan and the lease losses and the allocated transfer risk reserve (a reserve for certain foreign loans).CREDRISK, credit risk, is defined as the banks Basel I risk-weighted assets divided by GTA. lnLC is the log of liquidity creation. D-BHC is a dummy variable thatequals 1 if the bank has been part of a bank holding company over the eight quarters before the crisis. HHI is a bank-level Herfindahl index based on bank and thriftdeposits (the only variable for which geographic location is publicly available). We first establish the Herfindahl index of the local markets in which the bank has depositsand then weight these market indices by the proportion of the banks deposits in each of these markets. ROA is net income divided by total assets. All dollar values areexpressed in real 2009:Q4 dollars using the implicit GDP price deflator.

    Banking crises Market crises Normal timesSmall

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banksDependent variables:

    SURV 0.941 0.866 0.909 0.976 0.956 0.976 0.972 0.958 0.965(0.236) (0.342) (0.288) (0.154) (0.206) (0.155) (0.165) (0.200) (0.185)

    %MKTSHARE 0.255 0.183 0.192 0.213 0.212 0.166 0.183 0.136 0.161

    (0.760) (0.554) (0.605) (0.666) (0.531) (0.471) (0.603) (0.434) (0.487)

    PROF -0.024 -0.071 -0.077 -0.014 -0.015 -0.020 0.001 -0.005 -0.006(0.080) (0.094) (0.101) (0.078) (0.070) (0.080) (0.048) (0.050) (0.057)

    Independent variables:

    EQRAT 0.100 0.088 0.083 0.097 0.083 0.076 0.101 0.093 0.089(0.051) (0.045) (0.044) (0.038) (0.040) (0.028) (0.035) (0.044) (0.036)

    CREDRISK 0.633 0.745 0.795 0.607 0.684 0.768 0.614 0.680 0.704(0.135) (0.144) (0.178) (0.118) (0.136) (0.178) (0.131) (0.163) (0.168)

    lnLC 9.755 13.088 14.960 9.544 12.814 15.019 9.861 12.946 14.969(1.544) (0.801) (1.418) (1.419) (0.871) (1.420) (1.411) (0.824) (1.494)

    D-BHC 0.709 0.854 0.927 0.706 0.883 0.945 0.725 0.845 0.935(0.447) (0.348) (0.255) (0.443) (0.309) (0.223) (0.440) (0.357) (0.240)

    HHI 0.235 0.174 0.164 0.216 0.169 0.164 0.210 0.163 0.162(0.171) (0.113) (0.089) (0.130) (0.070) (0.078) (0.135) (0.080) (0.080)

    ROA 0.008 0.010 0.010 0.009 0.011 0.011 0.011 0.012 0.013(0.010) (0.010) (0.008) (0.011) (0.010) (0.011) (0.008) (0.008) (0.010)

    Obs 16206 600 422 25873 788 573 15522 578 426

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    Table 2: The effect of the banks pre-crisis capital ratio on its ability to survive crises and normal timesPanel A shows the results of logit regressions which examine how pre-crisis capital ratios affect banks ability to survivebanking crises (BNKCRIS: the credit crunch of the early 1990s and the recent subprime lending crisis), market crises(MKTCRIS: the 1987 stock market crash, the Russian debt crisis plus LTCM bailout in 1998, and the bursting of the dot.combubble plus September 11), and normal times (NORMALTIME) (see Section 3).

    In Panel A, the dependent variable is , where SURV is a dummy that equals 1 if the bank is in the sample

    one quarter before the crisis started and is still in the sample one quarter after the crisis, and 0 otherwise.

    Panels B D contain the predicted probability of surviving banking crises, market crises, and normal times, respectively, atdifferent capital ratios. Results are shown for small banks (GTA up to $1 billion), medium banks (GTA exceeding $1 billionand up to $3 billion), and large banks (GTA exceeding $3 billion). GTA equals total assets plus the allowance for loan and thelease losses and the allocated transfer risk reserve (a reserve for certain foreign loans).

    The key exogenous variables (EQRAT * BNKCRIS, EQRAT * MKTCRIS, and EQRAT * NORMALTIME) and controlvariables are averaged over the eight quarters before a crisis (except as noted). EQRAT is the equity capital ratio, calculated asequity capital as a proportion of GTA. GTA equals total assets plus the allowance for loan and the lease losses and theallocated transfer risk reserve (a reserve for certain foreign loans). CREDRISK, credit risk, is defined as the banks Basel Irisk-weighted assets divided by GTA. lnLC is the log of liquidity creation. D-BHC is a dummy variable that equals 1 if thebank has been part of a bank holding company over the eight quarters before the crisis. HHI is a bank-level Herfindahl indexbased on bank and thrift deposits (the only variable for which geographic location is publicly available). We first establish theHerfindahl index of the local markets in which the bank has deposits and then weight these market indices by the proportion ofthe banks deposits in each of these markets. ROA is net income divided by total assets. All dollar values are expressed in real

    2009:Q4 dollars using the implicit GDP price deflator.

    t-statistics are in parentheses. *, **, and *** denote significance at the 10%, 5%, and 1% level, respectively.

    Panel A: The effect of the banks pre-crisis capital ratio on its ability to survive

    SURV

    Small banks Medium banks Large banks

    EQRAT * BNKCRIS 15.839 23.257 38.825(8.70)*** (2.22)** (2.11)**

    EQRAT * MKTCRIS 12.864 -0.623 10.898(8.28)*** (-0.10) (0.76)

    EQRAT * NORMALTIME 9.264 -3.947 8.627(4 79)*** (-0 89) (0 62)

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    Panel B: Predicted probability of survivingbanking crises at different capital ratios

    Small banks Medium banks Large banks

    Capital ratio: Average minus 1 standard deviation 4.9% 4.3% 3.9%Average 10.0% 8.8% 8.3%

    Average plus 1 standard deviation 15.1% 13.3% 12.7%

    Predicted survival probabilitywhen capital is at: Average minus 1 standard deviation 92.8% 82.5% 88.1%

    Average 96.7% 93.0% 97.2%Average plus 1 standard deviation 98.5% 97.4% 99.4%

    Panel C: Predicted probability of survivingmarket crises at different capital ratiosSmall banks Medium banks Large banks

    Capital ratio: Average minus 1 standard deviation 5.9% 4.3% 4.7%Average 9.7% 8.3% 7.6%Average plus 1 standard deviation 13.5% 12.4% 10.4%

    Predicted survival probabilitywhen capital is at: Average minus 1 standard deviation 97.2% 98.3% 99.0%

    Average 98.1% 98.2% 99.3%Average plus 1 standard deviation 98.8% 98.1% 99.5%

    Panel D: Predicted probability of survivingnormal times at different capital ratiosSmall banks Medium banks Large banks

    Capital ratio: Average minus 1 standard deviation 6.5% 4.9% 5.2%Average 10.1% 9.3% 8.9%Average plus 1 standard deviation 13.6% 13.6% 12.5%

    Predicted survival probabilitywhen capital is at: Average minus 1 standard deviation 97.2% 97.3% 97.3%

    Average 97.8% 96.9% 97.6%Average plus 1 standard deviation 98.4% 96.4% 97.8%

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    Table 3: The effect of the banks pre-crisis capital ratio on its market share during crises and normal timesThis table shows how pre-crisis bank capital ratios affect banks competitive positions during banking crises (BNKCRIS: thecredit crunch of the early 1990s and the recent subprime lending crisis), market crises (MKTCRIS: the 1987 stock marketcrash, the Russian debt crisis plus LTCM bailout in 1998, and the bursting of the dot.com bubble plus September 11), andnormal times (NORMALTIME) (see Section 3). Results are shown for small banks (GTA up to $1 billion), medium banks

    (GTA exceeding $1 billion and up to $3 billion), and large banks (GTA exceeding $3 billion). GTA equals total assets plus theallowance for loan and the lease losses and the allocated transfer risk reserve (a reserve for certain foreign loans).

    The dependent variable is %MKTSHARE, the percentage change in the banks liquidity creation market share measured asthe banks average market share during a crisis minus its average market share over the eight quarters before the crisis, dividedby its pre-crisis market share and multiplied by 100.

    The key exogenous variables (EQRAT * BNKCRIS, EQRAT * MKTCRIS, and EQRAT * NORMALTIME) and controlvariables are averaged over the eight quarters before a crisis. EQRAT is the equity capital ratio, calculated as equity capital as

    a proportion of GTA. GTA equals total assets plus the allowance for loan and the lease losses and the allocated transfer riskreserve (a reserve for certain foreign loans). CREDRISK, credit risk, is defined as the banks Basel I risk-weighted assetsdivided by GTA. lnLC is the log of liquidity creation. D-BHC is a dummy variable that equals 1 if the bank has been part of abank holding company over the eight quarters before the crisis. HHI is a bank-level Herfindahl index based on bank and thriftdeposits (the only variable for which geographic location is publicly available). We first establish the Herfindahl index of thelocal markets in which the bank has deposits and then weight these market indices by the proportion of the banks deposits ineach of these markets. All dollar values are expressed in real 2009:Q4 dollars using the implicit GDP price deflator.

    t-statistics based on robust standard errors are in parentheses. *, **, and *** denote significance at the 10%, 5%, and 1% level,respectively.

    %MKTSHARE

    Small banks Medium banks Large banks

    EQRAT * BNKCRIS 5.124 1.305 2.448(28.29)*** (2.24)** (3.34)***

    EQRAT * MKTCRIS 4.072 -1.640 -0.492(20.52)*** (-2.79)*** (-0.43)

    EQRAT * NORMALTIME 3.382 1.988 2.841(14.27)*** (1.74)* (2.43)**

    CREDRISK * BNKCRIS -0.266 -0.213 -0.519(-3.98)*** (-1.00) (-2.37)**

    CREDRISK * MKTCRIS -0.572 0.517 -0.055(-10 50)*** (2 77)*** (-0 30)

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    Table 4: The effect of the banks pre-crisis capital ratio on its profitability during crises and normal timesThis table shows how pre-crisis bank capital ratios affect banks profitability during banking crises (BNKCRIS: the creditcrunch of the early 1990s and the recent subprime lending crisis), market crises (MKTCRIS: the 1987 stock market crash, theRussian debt crisis plus LTCM bailout in 1998, and the bursting of the dot.com bubble plus September 11), and normal times(NORMALTIME) (see Section 3). Results are shown for small banks (GTA up to $1 billion), medium banks (GTA exceeding

    $1 billion and up to $3 billion), and large banks (GTA exceeding $3 billion). GTA equals total assets plus the allowance forloan and the lease losses and the allocated transfer risk reserve (a reserve for certain foreign loans).

    The dependent variable is PROF, the change in profitability measured as the banks average ROE (net income divided byGTA) during a crisis minus its average ROE over the eight quarters before the crisis.

    The key exogenous variables (EQRAT * BNKCRIS, EQRAT * MKTCRIS, and EQRAT * NORMALTIME) and controlvariables are averaged over the eight quarters before a crisis. EQRAT is the equity capital ratio, calculated as equity capital asa proportion of GTA. GTA equals total assets plus the allowance for loan and the lease losses and the allocated transfer risk

    reserve (a reserve for certain foreign loans). CREDRISK, credit risk, is defined as the banks Basel I risk-weighted assetsdivided by GTA. lnLC is the log of liquidity creation. D-BHC is a dummy variable that equals 1 if the bank has been part of abank holding company over the eight quarters before the crisis. HHI is a bank-level Herfindahl index based on bank and thriftdeposits (the only variable for which geographic location is publicly available). We first establish the Herfindahl index of thelocal markets in which the bank has deposits and then weight these market indices by the proportion of the banks deposits ineach of these markets. All dollar values are expressed in real 2009:Q4 dollars using the implicit GDP price deflator.

    t-statistics based on robust standard errors are in parentheses. *, **, and *** denote significance at the 10%, 5%, and 1% level,respectively.

    PROF

    Small banks Medium banks Large banks

    EQRAT * BNKCRIS 0.061 0.109 0.239(3.41)*** (0.70) (2.71)***

    EQRAT * MKTCRIS 0.108 0.132 0.388(6.39)*** (2.00)** (2.33)**

    EQRAT * NORMALTIME 0.135 0.044 0.020(7.88)*** (0.64) (0.20)

    CREDRISK * BNKCRIS -0.201 -0.224 -0.151

    (-30.18)*** (-4.76)*** (-5.24)***CREDRISK * MKTCRIS -0.049 -0.066 -0.030

    (-8.24)*** (-2.65)*** (-1.24)

    CREDRISK * NORMALTIME 0 029 -0 008 -0 041

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    Table 5: RobustnessThis table presents the results of six checks to establish the robustness of our results. Panel A uses alternative specifications of survival, competitive position, andprofitability. Panel B uses regulatory capital ratios instead of the equity-to-assets ratio. Panel C drops Too-Big-To-Fail banks from the large-bank sample. Panel D usesalternative cutoffs separating medium and large banks. Panel E measures pre-crisis capital ratios alternatively one quarter before the crisis starts or averaged over the fourquarters before the crisis. Panel F deals with the potential endogeneity issues related to capital by using instrumental variable regressions.

    The crises include banking crises (BNKCRIS: the credit crunch of the early 1990s and the recent subprime lending crisis), market crises (MKTCRIS: the 1987 stock marketcrash, the Russian debt crisis plus LTCM bailout in 1998, and the bursting of the dot.com bubble plus September 11), and normal times (NORMALTIME) (see Section 3).

    Results are shown for small, medium, and large banks the cutoffs are GTA of $1 billion and $3 billion, respectively, unless otherwise noted. GTA equals total assets plusthe allowance for loan and the lease losses and the allocated transfer risk reserve (a reserve for certain foreign loans).

    SURV, survival, is a dummy that equals 1 if the bank is in the sample one quarter before such a crisis started and is still in the sample one quarter after the crisis, and 0otherwise. %MKTSHARE, the change in market share, is measured as the banks average market share during a crisis minus its average market share over the eightquarters before the crisis, normalized by its pre-crisis market share and multiplied by 100. Market share is the banks liquidity creation (LC) as a fraction of total LC.PROF, the change in profitability, is measured as the banks average profitability during a crisis minus its average profitability over the eight quarters before the crisis.Profitability is ROE, net income divided by equity capital.

    To preserve space, we only present the coefficients on the key exogenous variables although all the control variables (see Tables 2 4) are generally included in theregressions. Exception: the risk interaction terms are not included in Panel B because the numerator of the risk variable (Basel I risk-weighted assets) is identical to thedenominator of the regulatory capital ratio.

    t-statistics based on robust standard errors are in parentheses. *, **, and *** denote significance at the 10%, 5%, and 1% level, respectively.

    Panel A: Robustness use alternative definitions of survival, market share, and profitability

    A1: SURV_altUntil Q4 (instead of Q1) after crisis

    A2: %MKTSHARE_altBased on GTA (instead of LC)

    A3:PROF_altROA (instead of ROE)

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    EQRAT * BNKCRIS 10.648 22.777 9.170 1.593 0.653 1.158 0.013 -0.014 -0.004(7.40)*** (2.53)** (0.71) (31.27)*** (1.97)** (4.20)*** (6.93)*** (-0.67) (-0.57)

    EQRAT * MKTCRIS 12.414 -1.814 4.681 0.939 -0.280 0.502 0.004 -0.004 -0.003(10.91)*** (-0.57) (0.58) (18.06)*** (-2.15)** (1.40) (2.09)** (-0.68) (-0.16)

    EQRAT * NORMALTIME 7.796 -1.303 -3.656 0.618 0.117 0.653 0.016 -0.015 -0.008(5.85)*** (-0.33) (-0.70) (8.59)*** (0.31) (1.61) (7.94)*** (-1.73)* (-0.71)

    Obs 46017 1599 1194 52107 1911 1382 52107 1911 1382Adj R2 0.14 0.06 0.04 0.08 0.24 0.19

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    Panel B: Robustness use regulatory capital ratios

    SURV %MKTSHARE PROF

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    TIER1RAT * BNKCRIS 16.707 24.316 40.914 2.761 1.015 3.487 0.098 0.282 0.445(8.91)*** (2.27)** (2.23)** (20.92)*** (1.43) (3.36)*** (8.32)*** (2.51)** (3.69)***

    TIER1RAT * MKTCRIS 5.324 -1.282 4.954 2.575 -0.384 -0.314 0.047 0.049 0.143(6.66)*** (-0.80) (0.74) (22.23)*** (-0.93) (-0.48) (5.89)*** (2.18)** (2.03)**

    TIER1RAT * NORMALTIME 2.942 -0.853 3.383 2.213 0.868 1.727 0.000 0.038 0.071(3.52)*** (-0.44) (0.53) (18.52)*** (1.99)** (2.10)** (0.00) (1.23) (1.26)

    Obs 46017 1599 1194 52107 1911 1382 52107 1911 1382Adj R2 0.13 0.12 0.09 0.07 0.18 0.16

    Panel C: Robustness exclude Too-Big-To-Fail banks

    C1: Drop banks with GTA > $50 billion C2: Drop 19 largest banks each quarter

    SURV%MKTSHARE PROF SURV

    %MKTSHARE PROF

    EQRAT * BNKCRIS 42.959 2.707 0.267 47.774 2.700 0.285(2.15)** (3.17)*** (2.68)*** (2.32)** (3.14)*** (2.83)***

    EQRAT * MKTCRIS 9.947 -0.510 0.417 10.689 -0.548 0.324(0.69) (-0.42) (2.44)** (0.73) (-0.43) (2.02)**

    EQRAT * NORMALTIME 6.068 3.025 0.006 6.816 3.040 0.012(0.43) (2.55)** (0.05) (0.46) (2.58)** (0.12)

    Obs 1106 1273 1273 1088 1260 1260Adj R2 0.10 0.19 0.10 0.19

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    Panel D: Robustness use alternative cutoffs between medium and large banks of $5 billion and $10 billion

    D1: $5 billion cutoff

    SURV %MKTSHARE PROF

    Medium

    banks

    Large

    banks

    Medium

    banks

    Large

    banks

    Medium

    banks

    Large

    banks

    EQRAT * BNKCRIS 29.779 48.853 1.756 2.502 0.206 0.103

    (2.97)*** (1.86)* (3.05)*** (2.11)** (2.24)** (0.72)EQRAT * MKTCRIS 3.309 8.839 -1.392 -0.586 0.156 0.521(0.48) (0.42) (-2.37)** (-0.34) (2.19)** (1.94)*

    EQRAT * NORMALTIME -3.751 11.747 2.304 1.886 0.028 0.011(-0.86) (0.72) (2.45)** (1.11) (0.48) (0.06)

    Obs 1942 851 2312 981 2312 981Adj R2 0.12 0.09 0.21 0.16

    D2: $10 billion cutoffSURV %MKTSHARE PROF

    Medium

    banks

    Large

    banks

    Medium

    banks

    Large

    banks

    Medium

    banks

    Large

    banks

    EQRAT * BNKCRIS 25.939 68.809 1.694 2.746 0.211 0.113(2.68)*** (1.89)* (2.96)*** (1.75)* (2.41)** (0.72)

    EQRAT * MKTCRIS 3.448 47.787 -1.370 4.032 0.164 0.498(0.51) (1.00) (-2.56)** (1.95)* (2.07)** (1.73)*

    EQRAT * NORMALTIME -1.078 5.419 2.464 -0.251 0.043 -0.166(-0.22) (0.21) (2.71)*** (-0.16) (0.75) (-0.84)

    Obs 2315 239 2739 554 2739 554Adj R2 0.10 0.10 0.21 0.16

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    Panel E: Robustness measure pre-crisis capital ratios at different points before a crisis

    E1: Use the average capital ratio over 4 (instead of 8) quarters before the crisis

    SURV %MKTSHARE PROFSmall

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    EQRATave4Q * BNKCRIS 19.164 19.646 29.526 4.787 1.326 2.450 0.029 0.070 0.167(10.35)*** (2.07)** (1.71)* (24.07)*** (2.22)** (3.18)*** (1.52) (0.42) (1.80)*

    EQRATave4Q * MKTCRIS 12.863 -1.030 9.398 3.448 -1.991 -0.404 0.070 0.182 0.533(8.36)*** (-0.19) (0.63) (17.29)*** (-4.34)*** (-0.32) (3.99)*** (2.21)** (2.72)***

    EQRATave4Q * NORMALTIME 8.482 -4.197 3.762 2.704 1.493 2.569 0.069 -0.005 -0.040(4.41)*** (-0.96) (0.32) (10.92)*** (1.39) (2.20)** (4.03)*** (-0.08) (-0.42)

    Obs 45947 1599 1194 52029 1911 1382 52029 1911 1382Adj R2 0.12 0.14 0.08 0.09 0.22 0.18

    E2: Measure capital 1 quarter before the crisis (instead of the average capital ratio over 8 quarters before the crisis)SURV %MKTSHARE PROF

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banksEQRATQ1 * BNKCRIS 24.208 23.558 39.415 4.225 1.512 2.288 0.004 0.091 0.136

    (12.94)*** (2.46)** (2.47)** (16.25)*** (2.29)** (2.72)*** (0.17) (0.58) (1.26)

    EQRATQ1 * MKTCRIS 13.144 0.506 7.574 2.299 -1.821 0.039 0.009 0.168 0.389(8.29)*** (0.09) (0.53) (11.18)*** (-3.18)*** (0.03) (0.45) (2.15)** (1.91)*

    EQRATQ1 * NORMALTIME 6.930 -4.077 -2.044 1.647 0.273 2.298 -0.008 -0.125 -0.117(3.53)*** (-0.95) (-0.22) (6.40)*** (0.49) (2.11)** (-0.44) (-2.53)** (-1.40)

    Obs 45751 1599 1194 51809 1911 1382 51809 1911 1382Adj R2 0.10 0.13 0.08 0.09 0.22 0.17

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    Panel F: Robustness instrumental variable analysis

    F1: Hausman test for endogeneitySURV %MKTSHARE PROF

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Small

    banks

    Medium

    banks

    Large

    banks

    Hausman endogeneity test (p-value) 0.27 0.98 0