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Discrete independent component analysis (DICA) with belief propagation

机译:具有信念传播的离散独立分量分析(DICA)

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We apply belief propagation to a Bayesian bipartite graph composed of discrete independent hidden variables and discrete visible variables. The network is the Discrete counterpart of Independent Component Analysis (DICA) and it is manipulated in a factor graph form for inference and learning. A full set of simulations is reported for character images from the MNIST dataset. The results show that the factorial code implemented by the sources contributes to build a good generative model for the data that can be used in various inference modes.
机译:我们将信仰传播应用于由离散独立隐藏变量和离散可见变量组成的贝叶斯二角形图。该网络是独立分量分析(DICA)的离散对应物,它以因子图表形式被操纵和学习。报告了来自MNIST DataSet的字符图像的全套模拟。结果表明,源实现的因子码有助于为可以以各种推理模式使用的数据构建良好的生成模型。

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