Assessing Methods for Evaluating the Number of Components in Non-Negative Matrix Factorization

MATHEMATICS(2021)

引用 4|浏览2
暂无评分
摘要
Non-negative matrix factorization is a relatively new method of matrix decomposition which factors an m x n data matrix X into an m x k matrix W and a k x n matrix H, so that X & AP; W x H. Importantly, all values in X, W, and H are constrained to be non-negative. NMF can be used for dimensionality reduction, since the k columns of W can be considered components into which X has been decomposed. The question arises: how does one choose k? In this paper, we first assess methods for estimating k in the context of NMF in synthetic data. Second, we examine the effect of normalization on this estimate's accuracy in empirical data. In synthetic data with orthogonal underlying components, methods based on PCA and Brunet's Cophenetic Correlation Coefficient achieved the highest accuracy. When evaluated on a well-known real dataset, normalization had an unpredictable effect on the estimate. For any given normalization method, the methods for estimating k gave widely varying results. We conclude that when estimating k, it is best not to apply normalization. If the underlying components are known to be orthogonal, then Velicer's MAP or Minka's Laplace-PCA method might be best. However, when the orthogonality of the underlying components is unknown, none of the methods seemed preferable.
更多
查看译文
关键词
non-negative matrix factorization, normalization, PCA, factorization rank, number of factored components, high-dimensional data, unsupervised learning
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要