倾向得分匹配
会计研究
匹配(统计)
会计
计算机科学
平均处理效果
样本量测定
计量经济学
样品(材料)
统计
业务
数学
色谱法
化学
作者
Jonathan E. Shipman,Quinn Thomas Swanquist,Robert Lowell Whited
出处
期刊:The Accounting Review
[American Accounting Association]
日期:2016-03-01
卷期号:92 (1): 213-244
被引量:1206
摘要
ABSTRACT Propensity score matching (PSM) has become a popular technique for estimating average treatment effects (ATEs) in accounting research. In this study, we discuss the usefulness and limitations of PSM relative to more traditional multiple regression (MR) analysis. We discuss several PSM design choices and review the use of PSM in 86 articles in leading accounting journals from 2008–2014. We document a significant increase in the use of PSM from zero studies in 2008 to 26 studies in 2014. However, studies often oversell the capabilities of PSM, fail to disclose important design choices, and/or implement PSM in a theoretically inconsistent manner. We then empirically illustrate complications associated with PSM in three accounting research settings. We first demonstrate that when the treatment is not binary, PSM tends to confine analyses to a subsample of observations where the effect size is likely to be smallest. We also show that seemingly innocuous design choices greatly influence sample composition and estimates of the ATE. We conclude with suggestions for future research considering the use of matching methods. Data Availability: All data used are available from sources cited in the text.
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