Paper ID: 2408.08260
GSVD-NMF: Recovering Missing Features in Non-negative Matrix Factorization
Youdong Guo, Timothy E. Holy
Non-negative matrix factorization (NMF) is an important tool in signal processing and widely used to separate mixed sources into their components. However, NMF is NP-hard and thus may fail to discover the ideal factorization; moreover, the number of components may not be known in advance and thus features may be missed or incompletely separated. To recover missing components from under-complete NMF, we introduce GSVD-NMF, which proposes new components based on the generalized singular value decomposition (GSVD) between preliminary NMF results and the SVD of the original matrix. Simulation and experimental results demonstrate that GSVD-NMF often recovers missing features from under-complete NMF and helps NMF achieve better local optima.
Submitted: Aug 15, 2024