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Micro Data For Macro Models Fall 2011/Winter 2012 Topic 1: Consumption Inequality

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Micro Data For Macro Models. Fall 2011/Winter 2012 Topic 1: Consumption Inequality. Course Pre-Amble. 1998 – 2000 Cohort That Are Tenured at Top Schools (with some omissions). 1998 – 2000 Cohort That Are Tenured at Top Schools (with some omissions). Publishing?. - PowerPoint PPT Presentation

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Page 1: Micro Data For Macro Models

Micro Data For Macro Models

Fall 2011/Winter 2012

Topic 1: Consumption Inequality

Page 2: Micro Data For Macro Models

Course Pre-Amble

Page 3: Micro Data For Macro Models

1998 – 2000 Cohort That Are Tenured at Top Schools (with some omissions)

Marianne Bertrand (Chicago) Ananth Seshadri (Wisconsin)

Esther Duflo (MIT) Amil Petrin (Minnesota)

Mike Greenstone (MIT) Muhamet Yildiz (MIT)

Emmanuel Saez (Berkeley) Marco Battaglini (Princeton)

Jonathan Levin (Stanford) Xavier Gabaix (NYU)

Sendhil Mullainathan (Harvard) Monika Piazzesi (Stanford)

Chang-Tai Hseih (Chicago) Ricardo Reis (Columbia)

Erik Hurst (Chicago) Dirk Krueger (Penn)

Enrico Moretti (Berkely) Martin Schneider (Stanford)

Luigi Pistaferri (Stanford) Annette Vissing-Jorgensen (Northwestern)

David Autor (MIT) Mark Duggan (Wharton)

Mark Aguiar (Princeton) Fabrizio Perri (Minnesota)

Marc Melitz (Harvard) Alessandra Fogli (Minnesota)

Victor Chevnozhakov (MIT) Wouter Dessein (Columbia GSB)

Ted Miguel (Berkeley) ~ 900 people got a Ph.D. from top 15

Markus Bruennermeier (Princeton) departments during this time period

David Lee (Princeton) ~ 40- 50 (~5%) of people got tenured at top

15 departments

Page 4: Micro Data For Macro Models

1998 – 2000 Cohort That Are Tenured at Top Schools (with some omissions)

Marianne Bertrand (Chicago) Ananth Seshadri (Wisconsin)

Esther Duflo (MIT) Amil Petrin (Minnesota)

Mike Greenstone (MIT) Muhamet Yildiz (MIT)

Emmanuel Saez (Berkeley) Marco Battaglini (Princeton)

Jonathan Levin (Stanford) Xavier Gabaix (NYU)

Sendhil Mullainathan (Harvard) Monika Piazzesi (Stanford)

Chang-Tai Hseih (Chicago) Ricardo Reis (Columbia)

Erik Hurst (Chicago) Dirk Krueger (Penn)

Enrico Moretti (Berkely) Martin Schneider (Stanford)

Luigi Pistaferri (Stanford) Annette Vissing-Jorgensen (Northwestern)

David Autor (MIT) Mark Duggan (Wharton)

Mark Aguiar (Princeton) Fabrizio Perri (Minnesota)

Marc Melitz (Harvard) Alessandra Fogli (Minnesota)

Victor Chevnozhakov (MIT) Wouter Dessein (Columbia GSB)

Ted Miguel (Berkeley) ~ 900 people got a Ph.D. from top 15

Markus Bruennermeier (Princeton) departments during this time period

David Lee (Princeton) ~ 40- 50 (~5%) of people got tenured at top

15 departments

Page 5: Micro Data For Macro Models

Publishing?

• The median Ph.D. from a top 20 department never publishes anything in a peer reviewed journal

• The median peer reviewed article has less than 15 citations.

• See Dan Hamermesh’s web site for:

“Young Economist’s Guide to Professional Etiquette”

https://webspace.utexas.edu/hamermes/www/JEP92.pdf

Page 6: Micro Data For Macro Models

The Good News

• The creation of research is a skill just like inverting a matrix, solving DSGE models, computing standard errors, etc.

• The more you work on it, the better you will become.

• Read the early work of those recently tenured at top schools. Every single one of you could have written the same papers!

It is not only our technical prowess that distinguishes us throughout our careers, it is our ability to innovate and/or to come up with good questions.

Those who have impact on the profession due so because of their ideas.

Page 7: Micro Data For Macro Models

What Skill Are Ph.D. Students Most Deficient?

• Having the ability to identify interesting research questions

• The confusion of theoretical or empirical fire power as being an “end” as opposed to a “means”.

• Not having the ability to explain why anyone would care about their research.

Page 8: Micro Data For Macro Models

Goal of This Class

• Get you to start thinking about writing your dissertation

• Familiarize you with many data sets that are used by macro economists (and others) to be used as part of your dissertation.

• Expose you to literatures within macroeconomics that have strong empirical components.

• Help you turn good research ideas into good research papers.

Page 9: Micro Data For Macro Models

Some Housekeeping….

• T.A.: Sebastian (with set up an email list for class participants including auditors)

• Lots of work – hopefully all of it useful

o Homework

o Paper extension

o Virtual Paper

• Slides/Course Info

• Co-Taught with Steve Davis: Timing

Page 10: Micro Data For Macro Models

Very Important

• If you are seeking take the prelim in the Applied Macro Sequence (this course plus the remaining courses), you must:

1) Complete a full version of your virtual paper in order to pass the portion of the course taught by us.

2) We will not offer questions on the prelim (although the faculty who teach the other parts of the sequence will).

3) You have to notify Steve and Erik by end of February if you are planning to take the applied macro prelim. We will give you

feedback about our expectations for your paper.

4) You will still need to take the prelim with questions covering the remaining faculty (Harald, John Cochrane, Lars, etc.)

Page 11: Micro Data For Macro Models

My Portion of the Course

Topic 1: Consumption Inequality

Topic 2: Lifecycle Consumption

Topic 3: Home Production

Topic 4: Long Run Trends in Labor Supply

Topic 5: Unemployment During Recessions

Topic 6: Regional Adjustments

Topic 7: Occupational Choice

Topic 8: Understanding Small Businesses

Page 12: Micro Data For Macro Models

Steve’s Portion of the Class

A few words from Steve…..

Page 13: Micro Data For Macro Models

A Quick Detour:

Research Questions in Real Time

Page 15: Micro Data For Macro Models

Potential Research Questions

1. What Drives The Time Series Patterns in Aggregate Savings Rates?

- Let’s brainstorm some explanations…..

2. How Much of the Time Series Patterns of Aggregate Savings Can Be Explained by Various Factors (or at least one of the factors)?

3. Can We Use The Pre-2007 data to Predict Savings Behavior Going Forward?

Page 16: Micro Data For Macro Models

Potential Empirical Strategies?

• Think Broadly – Lets not be constrained by actual data (yet)

Page 17: Micro Data For Macro Models

Now Lets Think About Existing Data

• What data exists?

o What data easily exists? What are the limitations of these data?

o What data conceivably exists?

Page 18: Micro Data For Macro Models

An Important Next Step

• Why would someone care about the paper findings?

• Note:

Too often, researchers (old and young alike) forget to answer this next question.

Page 19: Micro Data For Macro Models

Topic 1:

The Evolution of Consumption Inequality

Page 20: Micro Data For Macro Models

Micro Expenditure Data: Household Surveys

• Consumer Expenditure Survey (U.S. data)

Starts in 1980

Broad consumption measures

Some income and demographic data

Repeated cross-sections

• Panel Study of Income Dynamics (U.S. data)

Starts in late 60s

Only food expenditure consistently

Housing/utilities (most of the time)

Broader measures (recently)

Very good income and demographics

Panel nature

Page 21: Micro Data For Macro Models

Micro Expenditure Data: Household Surveys

• British Household Panel (British Data)

o Panel data including income and expenditure

• Family Expenditure Survey (British Data)

• Bank of Italy Survey of Household Income and Wealth (Italian Data)

o Panel data including income and expenditure

• There are others….many Scandinavian countries, Japan, Canada, etc.

• Even some developing economies have detailed household surveys that track some measures of consumption (e.g., Mexico, Taiwan, Thailand)

Page 22: Micro Data For Macro Models

Micro Expenditure Data: Scanner Data

• Nielsen Homescan Data

o Large cross-section of households

o Very detailed level transaction data (at the level of UPC code)

o Some demographics

o Some panel component

o Matches quantities purchased with prices paid

o Covers most of the large MSAs

o Measurement error?

o Selection?

o Coverage of goods?

Page 23: Micro Data For Macro Models

Micro Income Data: Household Surveys

• Current Population Survey (CPS)

o Usual data set used within U.S. to track labor supply and earnings.

o Has panel component.

o Can be found at www.ipums.org/cps/

• PSID Can be found at http://psidonline.isr.umich.edu/

• Survey of Income and Program Participation (SIPP)

o Four year rotating panel

o Large sample sizes

o Over samples poor

• Census/American Community Survey

o Can be found at www.ipums.org

Page 24: Micro Data For Macro Models

24

Income and Consumption Inequality

• Large literature documenting the increase in income inequality within the U.S. during the last 30 years (Katz and Autor, 1999; Autor, Katz, Kearney, 2008)

• Consumption is a better measure of well being than income (utility is U(C) not U(Y)).

• Does income inequality imply consumption inequality?

Depends on whether income inequality is “permanent”

Depends on insurance mechanisms available to households

Depends on other margins of substitution (home production, female labor supply, etc.).

Page 25: Micro Data For Macro Models

25

Kevin Murphy’s Web Page

Page 26: Micro Data For Macro Models

26

Kevin Murphy’s Web Page

Page 27: Micro Data For Macro Models

27

Autor, Katz, Kearney (2008)

Page 28: Micro Data For Macro Models

Why Do We Care About Consumption Inequality?

• Why is it important?

o Learn about well being over time (economic growth, standard of livings, inequality, etc.).

o Learn about insurance mechanisms available to households (public insurance, private insurance, etc.)?

o Learn about the nature of income processes (more on this in the next set of lecture notes).

Page 29: Micro Data For Macro Models

A Classic: Attanasio and Davis (1996)

Page 30: Micro Data For Macro Models

Krueger and Perri (2006)

• What they do:

o Use data from the Consumer Expenditure Survey (CEX) to track the evolution of consumption inequality.

o CEX is includes a nationally representative sample of households.

- Designed to compute consumption weights for CPI

- Short panel dimension (4 quarters)

- Mostly used as repeated cross sections.

- Includes detailed spending measures on expenditures by categories.

o Use repeated cross sections to track consumption inequality.

Page 31: Micro Data For Macro Models

Krueger and Perri (2006): What They Find

Page 32: Micro Data For Macro Models

Krueger and Perri (2006): What They Find

Page 33: Micro Data For Macro Models

Krueger and Perri (2006): What They Find

Page 34: Micro Data For Macro Models

Krueger and Perri (2005): What They Conclude

• Conclusions

o Income inequality is much greater than consumption inequality

o If some of the increase in income inequality is idiosyncratic, households can self insure (or public sector can provide insurance) making consumption inequality respond less than income inequality.

o Write down a model where insurance is endogenously provided. Increasing idiosyncratic shocks to income can increase demand

for insurance (leading to more insurance). Consistent with their model, credit card access increased during this period.

o Bottom line: Use the consumption data to learn about the nature of income processes and insurance mechanisms.

Page 35: Micro Data For Macro Models

A Caveat – Some Data Issues

Page 36: Micro Data For Macro Models

36

A Data Problem: Average Real Consumption in CEX

Page 37: Micro Data For Macro Models

37

A Data Problem: Average Real Consumption in CEX

Page 38: Micro Data For Macro Models

38

Percent Change in Consumption in CEX (from 1981)

Page 39: Micro Data For Macro Models

39

Trends in Real NIPA Aggregate Consumption

Page 40: Micro Data For Macro Models

Can Measurement Error Alter Inequality Findings?

• Yes

• Depends on whether measurement error differs across the consumption (income) distribution.

• Suppose richer households have been underreporting their income to a greater extent in recent periods (relative to the past).

• The rich could be increasing their expenditure more (relative to other parts of the distribution). However, the systematic measurement error could also be increasing.

• How to test for group specific differences in measurement error?

Page 41: Micro Data For Macro Models

Aguair and Bils (2011)

• Try to account for differential measurement error over different “income-demographic” groups to get a sense of changing consumption inequality.

• Some particulars:

Define xijt = average expenditure on good j, by group i, at time t

j goods = food at home, clothing, utilities, entertainment, etc.

i groups = cells based on income (5) and demographics (18)

Define Xit = average total expenditure for group i at time t.

Formally: 1

J

it ijtjX x

Page 42: Micro Data For Macro Models

Log budget share of good: ln wi = ln (xi /X )

Log total real expenditure:

X = xLux+xNormal+xNecln X10 ln X90 ln X90

Estimated Engel curve for luxury

Estimated Engel curve for normal good

ln X90

Observed 1980

Observed2006

Inferred2006

The Essence of the Exercise (From a Discussion by Jonathan Parker; NBER EFG 2011)

Inferred adjustment to ln X90

ln X10

Page 43: Micro Data For Macro Models

Aguair and Bils (2011)

• Assume measurement error in expenditure……

• represents a good specific error (common across all groups)

• represents a group specific error (common across all goods)

*j i

t t ijtvijt ijtx x e

jtit

Page 44: Micro Data For Macro Models

Aguair and Bils (2011): Some Intuition

• Difference-in-Difference Estimates (2 good case, 2 group case)

• Goods = e (entertainment) and f(food)

• Groups = high (rich) and low (poor)

(difference out good specific error)

(difference out good specific error)

*, ,

*, ,

high lowhigh e high e

low e low e

x xe

x x

*, ,

*, ,

high lowhigh f high f

low f low f

x xe

x x

Page 45: Micro Data For Macro Models

Aguair and Bils (2011): Some Intuition

• Take differences across goods to eliminate group specific error

• Obtain an unbiased estimate of relative consumption inequality.

• Need to map into units of total expenditure. Want to recover:

* *, , , ,

* *, , , ,

ln ln ln ln (1)high e high f high e high f

low e low f low e low f

x x x x

x x x x

* *, ,ln lnhigh t low tX X

Page 46: Micro Data For Macro Models

Aguair and Bils (2011): Some Intuition

* * * *

* *, , ,

* *, , ,

* *, , ,

* *, , ,

* * * *, , , , , , , ,

Define: ln ; ln

.....

.....

.....

.....

( ) ( ) (

ijt ijt it it

high e t e high t

low e t e low t

high f t f high t

low f t f low t

high e t low e t high f t low f t e f

x X

* *, ,)( )high t low t

Page 47: Micro Data For Macro Models

Aguair and Bils (2011): Some Intuition

* * * * * *, , , , , , , , , ,

Using (1), we know that we can express:

( ) ( ) ( )( ) high e t low e t high f t low f t e f high t low t

* *, , , , , , , , , ,as: ( ) ( ) ( )( ) high e t low e t high f t low f t e f high t low t

Page 48: Micro Data For Macro Models

Aguair and Bils (2011)

• Suppose for true expenditures, x* :

• Can estimate the following using actual data in some period 0 where systematic measurement error is less of an issue:

• If there is no measurement error in the data, can uncover:

• Assumes income elasticities are constant over time (and can be locally estimated). Assume measurement error is zero in period 0.

* * *ln lnijt jt j ijt j i ijtx X Z

0 0 0 0ln lnij j j i j i ijx X Z u

ˆj j

Page 49: Micro Data For Macro Models

Aguair and Bils (2011): Some Intuition

Substituting in the estimated β’s, we get:

* * * * * *, , , , , , , , , ,

Using (1), we know that we can express:

( ) ( ) ( )( ) high e t low e t high f t low f t e f high t low t

* *, , , , , , , , , ,as: ( ) ( ) ( )( ) high e t low e t high f t low f t e f high t low t

* *, , , , , , , , , ,( ) ( ) ( )( ) high e t low e t high f t low f t e f high t low t

Page 50: Micro Data For Macro Models

50

Aguiar and Bils (2011) Findings

Page 51: Micro Data For Macro Models

51

Aguiar and Bils (2011) Findings

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52

Aguiar and Bils (2011) Findings

Relative Spending Differences Between High and Low Income Groups

Page 53: Micro Data For Macro Models

53

Aguiar and Bils (2011) Findings

Page 54: Micro Data For Macro Models

54

Aguiar and Bils (2011) Findings

Different Saving Rates From the CEX

Page 55: Micro Data For Macro Models

Conclusions: Topic 1

• Measurement error is important in Consumer Expenditure Survey!

• Even though there is measurement error, can still measure consumption inequality.

• Without controlling for measurement error, looks like small increases in consumption inequality.

• Much of that is due to the rich reporting less and less of their expenditures.

• Controlling for the systematic recent underreporting of the rich increases the estimated consumption inequality in the U.S. to levels that match the changing income inequality.