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Improved MDL Estimators Using Local Exponential Family Bundles Applied to Mixture Families

机译:使用应用于混合家族的局部指数家庭捆绑包改进MDL估计

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The MDL estimators for density estimation, which are defined by two-part codes for universal coding, are analyzed. We give a two-part code for mixture families whose regret is close to the minimax regret, where regret of a code with respect to a target family ? is the difference between the codelength of the code and the ideal codelength achieved by an element in ?. Our code is constructed using a probability density in an enlarged family of ? (a bundle of local exponential families of ?) for data description. This result gives a tight upper bound on the risk of the MDL estimator defined by the two-part code, based on the theory introduced by Barron and Cover in 1991.
机译:分析了用于密度估计的MDL估计,其由通用编码的两部分代码定义。我们为混合家族提供了两零零的守则,其遗憾接近Minimax的遗憾,遗憾的是关于目标家庭的代码?是代码的CodeLenth和由元素实现的理想编码长之间的差异吗?我们的代码是在放大的家庭中使用概率密度构建的? (一捆为数据描述的捆绑?)。该结果基于1991年的Barron和Cover介绍的理论,为两零代码定义的MDL估计的风险提供了紧密的上限。

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