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Estimating Continuous Distributions in Bayesian Classifiers

机译:估计贝叶斯分类器中的连续分布

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When modeling a probability distribution with a Bayesian network, we are faced with the problem of how to handle continuous variables. Most previous work has either solved the problem by discretizing, or assumed that the data are generated by a single Gaussian. In this paper we abandon the normality assumption and instead use statistical methods for nonparametric density estimation. For a naive Bayesian classifier, we present experimental results on a. variety of natural and artificial domains, comparing two methods of density estimation: assuming normality and modeling each conditional distribution with a single Gaussian; and using nonparametric kernel density estimation. We observe large reductions in error on several natural and artificial data sets, which suggests that kernel estimation is a useful tool for learning Bayesian models.
机译:当用贝叶斯网络对概率分布建模时,我们面临着如何处理连续变量的问题。以前的大多数工作要么通过离散化解决了问题,要么假定数据是由单个高斯生成的。在本文中,我们放弃了正态性假设,而是使用统计方法进行非参数密度估计。对于朴素的贝叶斯分类器,我们在上给出了实验结果。各种自然域和人工域,比较两种密度估计方法:假设正态性并使用单个高斯模型对每个条件分布进行建模;并使用非参数内核密度估计。我们在几个自然和人工数据集上观察到误差的大幅度减少,这表明核估计是学习贝叶斯模型的有用工具。

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