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Linearly constrained Bayesian matrix factorization for blind source separation

机译:线性约束贝叶斯矩阵分解用于盲源分离

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摘要

We present a general Bayesian approach to probabilistic matrix factorization subject to linear constraints. The approach is based on a Gaussian observation model and Gaussian priors with bilinear equality and inequality constraints. We present an efficient Markov chain Monte Carlo inference procedure based on Gibbs sampling. Special cases of the proposed model are Bayesian formulations of non-negative matrix factorization and factor analysis. The method is evaluated on a blind source separation problem. We demonstrate that our algorithm can be used to extract meaningful and interpretable features that are remarkably different from features extracted using existing related matrix factorization techniques.
机译:我们提出了线性约束下概率矩阵分解的通用贝叶斯方法。该方法基于具有双线性等式和不等式约束的高斯观测模型和高斯先验。我们提出了一种基于吉布斯采样的有效马尔可夫链蒙特卡罗推理程序。该模型的特殊情况是非负矩阵分解和因子分析的贝叶斯公式。对盲源分离问题进行了评估。我们证明了我们的算法可用于提取有意义和可解释的特征,这些特征与使用现有相关矩阵分解技术提取的特征明显不同。

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