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How valid are synthetic panel estimates of poverty dynamics?
- Publication Year :
- 2019
-
Abstract
- A growing literature uses repeated cross-section surveys to derive ‘synthetic panel’ data estimates of poverty dynamics statistics. It builds on the pioneering study by Dang et al. (‘DLLM’, Journal of Development Economics, 2014) providing bounds estimates and the innovative refinement proposed by Dang and Lanjouw (‘DL’, World Bank Policy Research Working Paper 6504, 2013) providing point estimates of the statistics of interest. We provide new evidence about the accuracy of synthetic panel estimates relative to benchmarks based on estimates derived from genuine household panel data, employing high quality data from Australia and Britain, while also examining the sensitivity of results to a number of analytical choices. For these two high-income countries we show that DL-method point estimates are distinctly less accurate than estimates derived in earlier validity studies, all of which focus on low- and middle-income countries. We also demonstrate that estimate validity depends on choices such as the age of the household head (defining the sample), the poverty line level, and the years analyzed. DLLM parametric bounds estimates virtually always include the true panel estimates, though the bounds can be wide.
- Subjects :
- History
Organizational Behavior and Human Resource Management
Polymers and Plastics
Sociology and Political Science
Poverty
05 social sciences
050109 social psychology
Sample (statistics)
Industrial and Manufacturing Engineering
Business economics
Data quality
HN Social history and conditions. Social problems. Social reform
0502 economics and business
Econometrics
0501 psychology and cognitive sciences
Point estimation
Business and International Management
050207 economics
General Economics, Econometrics and Finance
Parametric statistics
Panel data
Public finance
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....bc5d42408a7e52f8d815cff2d7ee38bf