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Probabilistic Latent Variable Models as Nonnegative Factorizations

机译:概率潜变量模型作为非负因式分解

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This paper presents a family of probabilistic latent variable models that can be used for analysis of nonnegative data. We show that there are strong ties between nonnegative matrixfactorization and this family, and provide some straightforward extensions which can help in dealing with shift invariances, higher-order decompositions and sparsity constraints. We argue through these extensions that the use of this approach allows for rapid development of complex statistical models for analyzing nonnegative data.
机译:本文介绍了可用于非负数据分析的概率潜在变量模型系列。我们证明非负矩阵分解与该族之间有很强的联系,并提供了一些直接的扩展,可以帮助处理移位不变性,高阶分解和稀疏性约束。通过这些扩展,我们认为使用这种方法可以快速开发用于分析非负数据的复杂统计模型。

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