REPORTS OF THE DEATH OF REGRESSION-DISCONTINUITY ANALYSIS ARE GREATLY EXAGGERATED

被引:11
|
作者
REICHARDT, CS
TROCHIM, WMK
CAPPELLERI, JC
机构
[1] CORNELL UNIV,DEPT HUMAN SERV STUDIES,ITHACA,NY 14853
[2] TUFTS UNIV NEW ENGLAND MED CTR,DIV CLIN CARE RES,BOSTON,MA 02111
关键词
D O I
10.1177/0193841X9501900102
中图分类号
C [社会科学总论];
学科分类号
03 ; 0303 ;
摘要
Stanley (1991) argues that both random measurement error in the pretest and treatment-effect interactions bins the estimate of the treatment effect when multiple regression is used to analyze the data from a regression-discontinuity design (RDD). Stanley also argues that these biases are so severe that they should cause researchers to consider using statistical procedures other than regression analysis. The authors of the present article disagree. Curvilinearity in the regression of the posttest on pretest scores can be difficult to model, can bins the regression analysis of data from the RDD if not modeled correctly and therefore should cause researchers to consider alternatives to regression analysis. If the regression surfaces are linear however unbiased estimates can be obtained easily via regression analysis whether or not either random measurement error in the pretest or treatment-effect interactions are present. improving upon regression analysis is a worthy goal but requires understanding just what are and are not the weaknesses of the method. in addressing these issues, this article elucidates some of the general principles that underlie the use of multiple regression to analyze data from the RDD quasi-experiment.
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页码:39 / 63
页数:25
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