PROJECTING FROM ADVANCE DATA USING PROPENSITY MODELING - AN APPLICATION TO INCOME AND TAX STATISTICS

被引:36
作者
CZAJKA, JL
HIRABAYASHI, SM
LITTLE, RJA
RUBIN, DB
机构
[1] URBAN INST,WASHINGTON,DC 20037
[2] UNIV CALIF LOS ANGELES,SCH MED,DEPT BIOMATH,LOS ANGELES,CA 90024
[3] HARVARD UNIV,DEPT STAT,CAMBRIDGE,MA 02138
关键词
POSTSTRATIFICATION; PROPENSITY; SCORE; UNDERCOVERAGE; UNIT NONRESPONSE; WEIGHTING;
D O I
10.2307/1391671
中图分类号
F [经济];
学科分类号
02 ;
摘要
This article proposes and evaluates two new methods of reweighting preliminary data to obtain estimates more closely approximating those derived from the final data set. In our motivating example, the preliminary data are an early sample of tax returns, and the final data set is the sample after all tax returns have been processed. The new methods estimate a predicted propensity for late filing for each return in the advance sample and then poststratify based on these propensity scores. Using advance and complete sample data for 1982, we demonstrate that the new methods produce advance estimates generally much closer to the final estimates than those derived from the current advance estimation techniques. The results demonstrate the value of propensity modeling, a general-purpose methodology that can be applied to a wide range of problems, including adjustment for unit nonresponse and frame undercoverage as well as statistical matching.
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页码:117 / 131
页数:15
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