Nonnegative Spectral Clustering with Discriminative Regularization

Authors

  • Yi Yang The University of Queensland
  • Heng Shen The University of Queensland
  • Feiping Nie University of Texas at Arlington
  • Rongrong Ji Columbia University
  • Xiaofang Zhou The University of Queensland

DOI:

https://doi.org/10.1609/aaai.v25i1.7922

Abstract

Clustering is a fundamental research topic in the field of data mining. Optimizing the objective functions of clustering algorithms, e.g. normalized cut and k-means, is an NP-hard optimization problem. Existing algorithms usually relax the elements of cluster indicator matrix from discrete values to continuous ones. Eigenvalue decomposition is then performed to obtain a relaxed continuous solution, which must be discretized. The main problem is that the signs of the relaxed continuous solution are mixed. Such results may deviate severely from the true solution, making it a nontrivial task to get the cluster labels. To address the problem, we impose an explicit nonnegative constraint for a more accurate solution during the relaxation. Besides, we additionally introduce a discriminative regularization into the objective to avoid overfitting. A new iterative approach is proposed to optimize the objective. We show that the algorithm is a general one which naturally leads to other extensions. Experiments demonstrate the effectiveness of our algorithm.

Downloads

Published

2011-08-04

How to Cite

Yang, Y., Shen, H., Nie, F., Ji, R., & Zhou, X. (2011). Nonnegative Spectral Clustering with Discriminative Regularization. Proceedings of the AAAI Conference on Artificial Intelligence, 25(1), 555-560. https://doi.org/10.1609/aaai.v25i1.7922

Issue

Section

AAAI Technical Track: Machine Learning