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Dimension Correction for Hierarchical Latent Class Models

机译:分层潜在类模型的尺寸校正

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Model complexity is an important factor to consider when selecting among graphical models. When all variables are observed, the complexity of a model can be measured by its standard dimension, i.e. the number of independent parameters. When hidden variables are present, however, standard dimension might no longer be appropriate. One should instead use effective dimension (Geiger et al. 1996). This paper is concerned with the computation of effective dimension. First we present an upper bound on the effective dimension of a latent class (LC) model. This bound is tight and its computation is easy. We then consider a generalization of LC models called hierarchical latent class (HLC) models (Zhang 2002). We show that the effective dimension of an HLC model can be obtained from the effective dimensions of some related LC models. We also demonstrate empirically that using effective dimension in place of standard dimension improves the quality of models learned from data.
机译:在图形模型之间进行选择时,模型复杂度是要考虑的重要因素。当观察到所有变量时,可以通过模型的标准尺寸(即独立参数的数量)来衡量模型的复杂性。但是,如果存在隐藏变量,则标准尺寸可能不再适用。人们应该改为使用有效尺寸(Geiger等,1996)。本文涉及有效尺寸的计算。首先,我们介绍了潜在类(LC)模型的有效维度的上限。这个界限很严格,计算也很容易。然后,我们考虑称为层次隐性类(HLC)模型的LC模型的一般化(Zhang 2002)。我们表明,可以从一些相关的LC模型的有效尺寸中获得HLC模型的有效尺寸。我们还凭经验证明使用有效尺寸代替标准尺寸可以提高从数据中学习的模型的质量。

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