损耗
辍学(神经网络)
收据
随机对照试验
心理学
随机试验
私人信息检索
主题(文档)
精算学
计量经济学
经济
医学
临床心理学
统计
计算机科学
内科学
数学
病理
图书馆学
机器学习
牙科
会计
作者
Tat Y. Chan,Barton H. Hamilton
摘要
Many randomized experiments are plagued by attrition, even among subjects receiving more effective treatments. We estimate the subject's utility associated with the receipt of treatment, as revealed by dropout behavior, to evaluate treatment effects. Utility is a function of both "publicly observed" outcomes and side effects privately observed by the subject. We analyze an influential AIDS clinical trial, ACTG 175, and show that for many subjects, AZT yields the highest level of utility despite having the smallest impact on the publicly observed outcome because of mild side effects. Moreover, although subjects enter the experiment uncertain of treatment effectiveness (and often the treatment received), the learning process implies that early dropout in ACTG 175 is primarily driven by side effects, whereas later attrition reflects declining treatment effectiveness.
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