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Relationship Between Bayesian and Frequentist Sample Size Determination

机译:贝叶斯和频繁样本大小确定之间的关系

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摘要

Sample size determination is among the most commonly encountered tasks in statistical practice. A broad range of frequen-tist and Bayesian methods for sample size determination can be described as choosing the smallest sample that is sufficient to achieve some set of goals. An example for the frequentist is seeking the smallest sample size that is sufficient to achieve a desired power at a specified significance level. An example for the Bayesian is seeking the smallest sample size necessary to obtain, in expectation, a desired rate of correct classification of the hypothesis as true or false. This article explores parallels between Bayesian and frequentist methods for determining sample size. We provide a simple but general and pragmatic framework for investigating the relationship between the two approaches, based on identifying mappings to connect the Bayesian and frequentist inputs necessary to obtain the same sample size. We illustrate this mapping with examples, highlighting a somewhat surprising "approximate functional correspondence" between power-based and information-based optimal sample sizes.
机译:样本大小确定是统计实践中最常遇到的任务之一。用于确定样本大小的各种频率和贝叶斯方法可以描述为选择足以实现某些目标的最小样本。对于常客的一个例子是寻求最小的样本量,该样本量足以在指定的显着性水平上获得所需的功效。贝叶斯方法的一个例子是寻求所需的最小样本量,以期获得预期的假设正确或错误分类的正确率。本文探讨了确定样本量的贝叶斯方法和常客方法之间的相似之处。我们提供了一个简单而通用的实用框架,用于研究两种方法之间的关系,其基础是确定映射以连接获得相同样本量所需的贝叶斯和频繁输入。我们用示例说明了这种映射,强调了基于功效的和基于信息的最佳样本量之间令人惊讶的“近似功能对应”。

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