evaluating the effects of business register updates on monthly survey estimates daniel lewis

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Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

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Page 1: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Evaluating the Effects of Business Register Updates on Monthly

Survey Estimates

Daniel Lewis

Page 2: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Overview

• Introduction

• Different strategies for updating the business register

• Simulation method for testing updating strategies

• Simulation results

• Conclusions and comments

Page 3: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Introduction

• Inter-Departmental Business Register (IDBR) used by most

ONS business surveys

• Key variables – employment, turnover, industry (SIC)

• Updated from different survey and admin sources

• Quality of updates affects survey estimates

• Desire to produce priority rules for updating

• Accuracy of updating strategies tested by simulation

Page 4: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Sources for updating the IDBR

• Employment:– Pay As You Earn tax data (PAYE)– Business Register Survey (BRS)– Imputed from turnover data

• (Annual) Turnover:– Value Added Tax data (VAT)– Imputed from employment data

• Standard Industrial Classification (SIC):– VAT– PAYE– BRS

Page 5: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Updating scenarios tested

• Employment:– Always favour PAYE– Always favour BRS– Favour BRS if less than 3 / 2 / 1 years old

• SIC:– Always favour PAYE– Always favour VAT– Always favour BRS– Favour BRS if less than 3 / 2 / 1 years old– Range of options for second priority if first unavailable

• Frequency of updates – monthly, quarterly, annually

Page 6: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Method for testing updating scenarios

• Assess effect on monthly turnover survey estimates

• Simulation method using four steps:

1. Simulate 12 months ‘real world’ data

2. Create business register

3. Select and survey samples from register

4. Calculate estimates and compare to ‘true’ values

Page 7: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

1. Simulate ‘real world’ data (i)

• Use January IDBR data as starting point

• Analyse 12 months of IDBR data to estimate:– Probability of a business dying– Probability of changing SIC– Probability of a change in turnover– Probability of a change in employment– Probability of a new business being born

• Probabilities used to randomly assign characteristics to businesses each month

Page 8: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

1. Simulate ‘real world’ data (ii)

• Changes in employment and turnover modelled based on observed means and standard deviations within strata

• Change in SIC randomly assigned based on probabilities of each type of SIC change

• Births and deaths also randomly introduced based on probabilities

• Monthly turnover data created by comparison with weighted monthly survey data from the same year

monthly survey turnover estimatesimulated annual turnover

actual IDBR annual turnover

Page 9: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

2. Create business register

• Create register variables from ‘real world’ for each updating source with matching (realistic) quality deficiencies

• Quality parameters for each source derived by comparing average changes in employment and SIC before and after main register update

• Variables for each updating scenario derived by adding random variation to ‘real world’ value:

,

,

, ,

where unit value for a given source and age

real world value for unit

quality parameter for the source and age

N(0,1)

i sa

i real

sa

i

i sa sa ii real

Y i

Y i

Q

Z

Y Y Q Z

Page 10: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

3. Select and survey samples

• Samples drawn many times from the simulated business registers using typical business survey sample design

• Stratified by industry and employment

• Neyman allocation using annual turnover data

• Samples selected using Permanent Random Number sampling with different random start for each iteration and 15 month rotation period

• Turnover value ‘collected’ for each sampled business

Page 11: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

4. Calculate and compare estimates

• Estimates of total turnover calculated for each sample using separate ratio estimator with employment as auxiliary

• MSEs calculated for each updating scenario by comparison with true turnover in the ‘real world’:

2

1

ˆ( )N

ii

Y YMSE

N

Page 12: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Simulation results

• Simulation very time consuming

– Only possible to draw 516 samples

– Just sufficient for convergence

• Best updating strategy:

– Update IDBR monthly

– Give preference to PAYE for employment

– Use BRS for SIC if less than 3 years old, otherwise VAT

• A few other options were not significantly worse

Page 13: Evaluating the Effects of Business Register Updates on Monthly Survey Estimates Daniel Lewis

Conclusions and comments

• Method very computer intensive, but gave useful results

• Project time limited, so constrained to using simple methods

• Potential to extend the model to better reflect business survey populations and updating processes

• Then possible to test a wide range of business survey methods:

– Sample designs, rotation rates, estimation, variance estimation, outlier treatment, …