Matrix Factorization plays an important role in machine learning such as Non-negative Matrix Factorization, Principal Component Analysis, Dictionary Learning, etc. However, most of the studies aim to minimize the loss by measuring the Euclidean distance, though in some fields, angle distance is known to be more important and critical for analysis. In this paper, we propose a method by adding constraints on factors to unify the Euclidean and angle distance. However, due to non-convexity of the objective and constraints, the optimized solution is not easy to obtain. In this paper we propose a general framework to systematically solve it with provable convergence guarantee with various constraints.
翻译:矩阵保理学在非负矩阵保理学、主元件分析、词典学等机器学习中起着重要作用。 然而,大多数研究的目的是通过测量欧几里得距离来尽量减少损失,尽管在某些领域,角距离据知更为重要,对分析来说也更为关键。在本文件中,我们建议了一种方法,在各种因素上添加限制因素,以统一欧几里德和角距离。然而,由于目标和限制不均匀,最佳解决办法不容易获得。在本文件中,我们提出了一个总的框架,以系统解决它,用各种限制的可调和的汇合保证。