概化理论
整群抽样
采样(信号处理)
样品(材料)
推论
分层抽样
计算机科学
选择(遗传算法)
协变量
统计
样本量测定
计量经济学
人口
比例(比率)
星团(航天器)
抽样设计
数学
机器学习
人工智能
地理
滤波器(信号处理)
社会学
人口学
地图学
化学
色谱法
程序设计语言
计算机视觉
标识
DOI:10.1177/0193841x13516324
摘要
Background: An important question in the design of experiments is how to ensure that the findings from the experiment are generalizable to a larger population. This concern with generalizability is particularly important when treatment effects are heterogeneous and when selecting units into the experiment using random sampling is not possible—two conditions commonly met in large-scale educational experiments. Method: This article introduces a model-based balanced-sampling framework for improving generalizations, with a focus on developing methods that are robust to model misspecification. Additionally, the article provides a new method for sample selection within this framework: First units in an inference population are divided into relatively homogenous strata using cluster analysis, and then the sample is selected using distance rankings. Result: In order to demonstrate and evaluate the method, a reanalysis of a completed experiment is conducted. This example compares samples selected using the new method with the actual sample used in the experiment. Results indicate that even under high nonresponse, balance is better on most covariates and that fewer coverage errors result. Conclusion: The article concludes with a discussion of additional benefits and limitations of the method.
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