A global optimization algorithm for sparse mixed membership matrix factorization
2016-10-19Unverified0· sign in to hype
Fan Zhang, Chuangqi Wang, Andrew Trapp, Patrick Flaherty
Unverified — Be the first to reproduce this paper.
ReproduceAbstract
Mixed membership factorization is a popular approach for analyzing data sets that have within-sample heterogeneity. In recent years, several algorithms have been developed for mixed membership matrix factorization, but they only guarantee estimates from a local optimum. Here, we derive a global optimization (GOP) algorithm that provides a guaranteed -global optimum for a sparse mixed membership matrix factorization problem. We test the algorithm on simulated data and find the algorithm always bounds the global optimum across random initializations and explores multiple modes efficiently.