A Note on the Exact Relation Between Mixture Likelihood and Entropy

A. Orlando, Rahul Dhanda
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引用次数: 0

Abstract

It is interesting to note that the expected value of the log likelihood function is entropy. This note shows that there is an exact relationship between the mixture log likelihood function (ln LM) and the sum of the mixing distribution entropy (HM) and the mixture density entropy (HD). Ln LM is seen as a function exactly of four Shannon entropies, each a unique measure of uncertainty. This method, known as mixtures of linear models (MLM), is a form of empirical Bayes which uses a non-informative uniform prior and generates both confidence intervals and p-values which clinicians and regulatory agencies can use to evaluate scientific evidence. An example based on allergic rhinitis symptoms scores are given and show how easy it is to assess the fit of the model and evaluate the results of the trial.
关于混合似然与熵之间确切关系的注记
有趣的是,对数似然函数的期望值是熵。这说明混合对数似然函数(ln LM)与混合分布熵(HM)和混合密度熵(HD)的和之间存在着精确的关系。Ln LM被看作是四个香农熵的函数,每个香农熵都是不确定性的唯一度量。这种方法被称为混合线性模型(MLM),是经验贝叶斯的一种形式,它使用非信息统一先验,并生成临床医生和监管机构可以用来评估科学证据的置信区间和p值。给出了一个基于过敏性鼻炎症状评分的例子,并显示了评估模型的拟合和评估试验结果是多么容易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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