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Bayesian and Quasi-Bayesian Estimators for Mutual Information from Discrete Data

机译:离散数据互信息的贝叶斯和拟贝叶斯估计

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Mutual information (MI) quantifies the statistical dependency between a pair of random variables, and plays a central role in the analysis of engineering and biological systems. Estimation of MI is difficult due to its dependence on an entire joint distribution, which is difficult to estimate from samples. Here we discuss several regularized estimators for MI that employ priors based on the Dirichlet distribution. First, we discuss three “quasi-Bayesian” estimators that result from linear combinations of Bayesian estimates for conditional and marginal entropies. We show that these estimators are not in fact Bayesian, and do not arise from a well-defined posterior distribution and may in fact be negative. Second, we show that a fully Bayesian MI estimator proposed by Hutter (2002), which relies on a fixed Dirichlet prior, exhibits strong prior dependence and has large bias for small datasets. Third, we formulate a novel Bayesian estimator using a mixture-of-Dirichlets prior, with mixing weights designed to produce an approximately flat prior over MI. We examine the performance of these estimators with a variety of simulated datasets and show that, surprisingly, quasi-Bayesian estimators generally outperform our Bayesian estimator. We discuss outstanding challenges for MI estimation and suggest promising avenues for future research.
机译:互信息(MI)量化了一对随机变量之间的统计依存关系,并且在工程和生物系统的分析中起着核心作用。由于MI依赖于整个关节分布,因此很难估计MI,这很难从样本中估计出来。在这里,我们讨论基于Dirichlet分布采用先验的MI的几种正则估计器。首先,我们讨论由条件和边际熵的贝叶斯估计的线性组合得出的三个“拟贝叶斯”估计器。我们表明,这些估计量实际上不是贝叶斯估计,也不是由定义明确的后验分布产生的,并且实际上可能是负数。其次,我们证明了由Hutter(2002)提出的完全贝叶斯MI估计量,它依赖于固定的Dirichlet先验,表现出很强的先验依赖性,并且对小数据集具有较大的偏差。第三,我们使用Dirichlets混合先验公式,设计了新颖的贝叶斯估计器,其混合权重设计为比MI产生近似平坦的先验值。我们使用各种模拟数据集检查了这些估计量的性能,并显示出令人惊讶的是,拟贝叶斯估计量通常优于我们的贝叶斯估计量。我们讨论了MI估计面临的挑战,并为未来的研究提供了有希望的途径。

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