增加美国人口普查数据的行业和职业的受访者

P. Meyer, Kendra Asher
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引用次数: 0

摘要

美国人口普查局将调查对象分为数百个详细的行业和职业类别。分类系统周期性地变化,在时间序列中产生中断。标准的人行横道和统一的分类系统架起了这段时间的桥梁,但这些通常会留下稀疏或空的细胞,或者导致时间序列的急剧变化。我们提出了一种方法来预测标准化的行业,职业和相关变量的每个就业受访者在公共使用样本从最近的人口普查和CPS数据。与早期的方法不同,预测利用每个人的微观数据和大型训练数据集。对结果“增强”数据集的测试可以评估它们与已知趋势、平滑标准和基准的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmenting U.S. Census data on industry and occupation of respondents
The U.S. Census Bureau classifies survey respondents into hundreds of detailed industry and occupation categories. The classification systems change periodically, creating breaks in time series. Standard crosswalks and unified category systems bridge the periods but these often leave sparse or empty cells, or induce sharp changes in time series. We propose a methodology to predict standardized industry, occupation, and related variables for each employed respondent in the public use samples from recent Censuses of Population and CPS data. Unlike earlier approaches, predictions draw from micro data on each individual and large training data sets. Tests of the resulting “augmented” data sets can evaluate their consistency with known trends, smoothness criteria, and benchmarks.
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