非负矩阵分解
算法
乘法函数
噪音(视频)
计算机科学
矩阵分解
乘性噪声
单调函数
非负矩阵
基质(化学分析)
模式识别(心理学)
数学
人工智能
对称矩阵
图像(数学)
模拟信号
物理
信号传递函数
数学分析
计算机硬件
数字信号处理
量子力学
特征向量
复合材料
材料科学
作者
Karthik Devarajan,Vincent C. K. Cheung
摘要
Nonnegative matrix factorization (NMF) by the multiplicative updates algorithm is a powerful machine learning method for decomposing a high-dimensional nonnegative matrix V into two nonnegative matrices, W and H, where [Formula: see text]. It has been successfully applied in the analysis and interpretation of large-scale data arising in neuroscience, computational biology, and natural language processing, among other areas. A distinctive feature of NMF is its nonnegativity constraints that allow only additive linear combinations of the data, thus enabling it to learn parts that have distinct physical representations in reality. In this letter, we describe an information-theoretic approach to NMF for signal-dependent noise based on the generalized inverse gaussian model. Specifically, we propose three novel algorithms in this setting, each based on multiplicative updates, and prove monotonicity of updates using the EM algorithm. In addition, we develop algorithm-specific measures to evaluate their goodness of fit on data. Our methods are demonstrated using experimental data from electromyography studies, as well as simulated data in the extraction of muscle synergies, and compared with existing algorithms for signal-dependent noise.
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