SAGA: sparse and geometry-aware non-negative matrix factorization through non-linear local embedding

作者:Nicolas Courty, Xing Gong, Jimmy Vandel, Thomas Burger

摘要

This paper presents a new non-negative matrix factorization technique which (1) allows the decomposition of the original data on multiple latent factors accounting for the geometrical structure of the manifold embedding the data; (2) provides an optimal representation with a controllable level of sparsity; (3) has an overall linear complexity allowing handling in tractable time large and high dimensional datasets. It operates by coding the data with respect to local neighbors with non-linear weights. This locality is obtained as a consequence of the simultaneous sparsity and convexity constraints. Our method is demonstrated over several experiments, including a feature extraction and classification task, where it achieves better performances than the state-of-the-art factorization methods, with a shorter computational time.

论文关键词:Non-negative matrix factorization, Manifold sampling , Kernel methods, Sparse projections, Simplex methods , Convexity constraints

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10994-014-5463-y