历史数据的自动链接

Automated Linking of Historical Data

Journal of Economic Literature · 2021
被引 191 · 同刊同年前 10%
人大 A-ABS 4

中文导读

评估多种自动记录链接方法在全量人口普查数据中的表现,发现自动方法误报率低、与人工链接一致性高,且不同方法得到的分析结果相似。

Abstract

The recent digitization of complete count census data is an extraordinary opportunity for social scientists to create large longitudinal datasets by linking individuals from one census to another or from other sources to the census. We evaluate different automated methods for record linkage, performing a series of comparisons across methods and against hand linking. We have three main findings that lead us to conclude that automated methods perform well. First, a number of automated methods generate very low (less than 5 percent) false positive rates. The automated methods trace out a frontier illustrating the trade-off between the false positive rate and the (true) match rate. Relative to more conservative automated algorithms, humans tend to link more observations but at a cost of higher rates of false positives. Second, when human linkers and algorithms use the same linking variables, there is relatively little disagreement between them. Third, across a number of plausible analyses, coefficient estimates and parameters of interest are very similar when using linked samples based on each of the different automated methods. We provide code and Stata commands to implement the various automated methods.

历史数据自动链接记录链接方法人口普查数据链接质量评估