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Letters to Nature
Nature 401, 788-791 (21 October 1999) | doi:10.1038/44565; Received 24 May 1999; Accepted 6 August 1999
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Learning the parts of objects by non-negative matrix factorization
Daniel D. Lee1 & H. Sebastian Seung1,2
- Bell Laboratories, Lucent Technologies , Murray Hill, New Jersey 07974, USA
- Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA
Correspondence to: H. Sebastian Seung1,2 Correspondence and requests for materials should be addressed to H.S.S.
Abstract
Is perception of the whole based on perception of its parts? There is psychological1 and physiological2, 3 evidence for parts-based representations in the brain, and certain computational theories of object recognition rely on such representations4, 5. But little is known about how brains or computers might learn the parts of objects. Here we demonstrate an algorithm for non-negative matrix factorization that is able to learn parts of faces and semantic features of text. This is in contrast to other methods, such as principal components analysis and vector quantization, that learn holistic, not parts-based, representations. Non-negative matrix factorization is distinguished from the other methods by its use of non-negativity constraints. These constraints lead to a parts-based representation because they allow only additive, not subtractive, combinations. When non-negative matrix factorization is implemented as a neural network, parts-based representations emerge by virtue of two properties: the firing rates of neurons are never negative and synaptic strengths do not change sign.
- Bell Laboratories, Lucent Technologies , Murray Hill, New Jersey 07974, USA
- Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA
Correspondence to: H. Sebastian Seung1,2 Correspondence and requests for materials should be addressed to H.S.S.
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