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首页> 外文期刊>Methodology and Computing in Applied Probability >The Generalized Cross Entropy Method, with Applications to Probability Density Estimation
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The Generalized Cross Entropy Method, with Applications to Probability Density Estimation

机译:广义交叉熵方法及其在概率密度估计中的应用

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摘要

Nonparametric density estimation aims to determine the sparsest model that explains a given set of empirical data and which uses as few assumptions as possible. Many of the currently existing methods do not provide a sparse solution to the problem and rely on asymptotic approximations. In this paper we describe a framework for density estimation which uses information-theoretic measures of model complexity with the aim of constructing a sparse density estimator that does not rely on large sample approximations. The effectiveness of the approach is demonstrated through an application to some well-known density estimation test cases.
机译:非参数密度估计旨在确定最稀疏的模型,该模型可以解释一组给定的经验数据,并使用尽可能少的假设。当前存在的许多方法并未提供对该问题的稀疏解决方案,而是依靠渐近逼近。在本文中,我们描述了密度估计的框架,该框架使用模型复杂度的信息理论方法来构建不依赖大样本近似值的稀疏密度估计器。通过将其应用于一些众所周知的密度估计测试案例,证明了该方法的有效性。

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