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Case Based Imprecision Estimates for Bayes Classifiers with the Bayesian Bootstrap

机译:基于案例的贝叶斯分类器的贝叶斯分类器不精确估计

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This article outlines a Bayesian bootstrap method for case based imprecision estimates in Bayes classification. We argue that this approach is an important complement to methods such as k-fold cross validation that are based on overall error rates. It is shown how case based imprecision estimates may be used to improve Bayes classifiers under asymmetrical loss functions. In addition, other approaches to making use of case based imprecision estimates are discussed and illustrated on two real world data sets. Contrary to the common assumption, Bayesian bootstrap simulations indicate that the uncertainty associated with the output of a Bayes classifier is often far from normally distributed.
机译:本文概述了贝叶斯引导方法,用于贝叶斯分类中基于案例的不精确估计。我们认为这种方法是对基于整体错误率的k倍交叉验证等方法的重要补充。显示了在不对称损失函数下如何使用基于案例的不精确估计来改进贝叶斯分类器。另外,在两个真实世界的数据集上讨论和说明了其他基于案例的不精确估计的使用方法。与通常的假设相反,贝叶斯自举模拟表明与贝叶斯分类器的输出相关的不确定性通常远离正态分布。

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