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EAAI 2007

Initialization enhancer for non-negative matrix factorization

Journal Article journal-article Applied Artificial Intelligence ยท Artificial Intelligence

Abstract

Non-negative matrix factorization (NMF), proposed recently by Lee and Seung, has been applied to many areas such as dimensionality reduction, image classification image compression, and so on. Based on traditional NMF, researchers have put forward several new algorithms to improve its performance. However, particular emphasis has to be placed on the initialization of NMF because of its local convergence, although it is usually ignored in many documents. In this paper, we explore three initialization methods based on principal component analysis (PCA), fuzzy clustering and Gabor wavelets either for the consideration of computational complexity or the preservation of structure. In addition, the three methods develop an efficient way of selecting the rank of the NMF in low-dimensional space.

Authors

Keywords

  • Non-negative matrix factorization
  • Principal component analysis
  • Fuzzy clustering
  • Gabor wavelet
  • Dimensionality reduction
  • Image classification

Context

Venue
Engineering Applications of Artificial Intelligence
Archive span
1988-2026
Indexed papers
13269
Paper id
1148728734570772382