Title :
Learning overcomplete dictionaries with ℓ0-sparse Non-negative Matrix Factorisation
Author :
O´Hanlon, Ken ; Plumbley, Mark D.
Author_Institution :
Centre for Digital Music, Queen Mary Univ. of London, London, UK
Abstract :
Non-negative Matrix Factorisation (NMF) is a popular tool in which a `parts-based´ representation of a non-negative matrix is sought. NMF tends to produce sparse decompositions. This sparsity is a desirable property in many applications, and Sparse NMF (S-NMF) methods have been proposed to enhance this feature. Typically these enforce sparsity through use of a penalty term, and a ℓ1 norm penalty term is often used. However an ℓ1 penalty term may not be appropriate in a non-negative framework. In this paper the use of a ℓ0 norm penalty for NMF is proposed, approximated using backwards elimination from an initial NNLS decomposition. Dictionary recovery experiments using overcomplete dictionaries show that this method outperforms both NMF and a state of the art S-NMF method, in particular when the dictionary to be learnt is dense.
Keywords :
dictionaries; least squares approximations; matrix decomposition; sparse matrices; I1 norm penalty term; NNLS decomposition; S-NMF methods; dictionary recovery experiments; l0-sparse nonnegative matrix factorisation; nonnegative least squares decomposition; overcomplete dictionary learning; parts-based representation; sparse NMF methods; sparse decompositions; Cost function; Dictionaries; Least squares approximations; Matrix decomposition; Signal processing algorithms; Sparse matrices; NMF; dictionary learning; non-negative; sparse;
Conference_Titel :
Global Conference on Signal and Information Processing (GlobalSIP), 2013 IEEE
Conference_Location :
Austin, TX
DOI :
10.1109/GlobalSIP.2013.6737056