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Probabilistic Factorization of Non-negative Data with Entropic Co-occurrence Constraints

机译:具有熵共现约束的非负数据的概率因式分解

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摘要

In this paper we present a probabilistic algorithm which fac-torizes non-negative data. We employ entropic priors to additionally satisfy that user specified pairs of factors in this model will have their cross entropy maximized or minimized. These priors allow us to construct factorization algorithms that result in maximally statistically different factors, something that generic non-negative factorization algorithms cannot explicitly guarantee. We further show how this approach can be used to discover clusters of factors which allow a richer description of data while still effectively performing a low rank analysis.
机译:在本文中,我们提出了一种可简化非负数据的概率算法。我们使用熵先验来进一步满足该模型中用户指定的成对因素将其交叉熵最大化或最小化的要求。这些先验条件使我们能够构建导致最大的统计学差异因素的分解算法,这是一般非负分解算法无法明确保证的。我们进一步展示了如何使用这种方法来发现因素的群集,这些群集允许对数据进行更丰富的描述,同时仍然可以有效地执行低秩分析。

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