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Direct Learning of Sparse Changes in Markov Networks by Density Ratio Estimation

机译:通过密度比估计直接学习Markov网络中的稀疏变化

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We propose a new method for detecting changes in Markov network structure between two sets of samples. Instead of naively fitting two Markov network models separately to the two data sets and figuring out their difference, we directly learn the network structure change by estimating the ratio of Markov network models. This density-ratio formulation naturally allows us to introduce sparsity in the network structure change, which highly contributes to enhancing interpretability. Furthermore, computation of the normalization term, which is a critical computational bottleneck of the naive approach, can be remarkably mitigated. Through experiments on gene expression and Twitter data analysis, we demonstrate the usefulness of our method.
机译:我们提出了一种新方法,用于检测两组样本之间的马尔可夫网络结构的变化。而不是分开顽固地拟合两个马尔可夫网络模型,而是通过估计马尔可夫网络模型的比率,直接学习网络结构改变。这种密度比配方自然允许我们在网络结构变化中引入稀疏性,这高度有助于提高解释性。此外,可以显着减轻归一化术语的归一化术语,其是幼稚方法的关键计算瓶颈。通过对基因表达和Twitter数据分析的实验,我们证明了我们方法的有用性。

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