Title :
Low-rank kernel learning for semi-supervised clustering
Author :
Baghshah, Mahdieh Soleymani ; Shouraki, Saeed Bagheri
Author_Institution :
Comput. Eng. Dept., Sharif Univ. of Technol., Tehran, Iran
Abstract :
In the last decade, there has been a growing interest in distance function learning for semi-supervised clustering settings. In addition to the earlier methods that learn Mahalanobis metrics (or equivalently, linear transformations), some nonlinear metric learning methods have also been recently introduced. However, these methods either allow limited choice of distance metrics yielding limited flexibility or learn nonparametric kernel matrices and scale very poorly (prohibiting applicability to medium and large data sets). In this paper, we propose a novel method that learns low-rank kernel matrices from pairwise constraints and unlabeled data. We formulate the proposed method as a trace ratio optimization problem and learn appropriate distance metrics through finding optimal low-rank kernel matrices. The proposed optimization problem can be solved much more efficiently than SDP problems introduced to learn nonparametric kernel matrices. Experimental results demonstrate the effectiveness of our method on synthetic and real-world data sets.
Keywords :
distance learning; learning (artificial intelligence); optimisation; pattern clustering; Mahalanobis metrics; distance function learning; distance metrics; kernel learning; nonlinear metric learning method; nonparametric kernel matrix; semidefinite programming problem; semisupervised clustering; trace ratio optimization problem; Artificial neural networks; Clustering algorithms; Kernel; Learning systems; Machine learning; Measurement; Optimization; Low-rank kernel matrix; kernel learning; pairwise constraints; unlabeled data;
Conference_Titel :
Cognitive Informatics (ICCI), 2010 9th IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-8041-8
DOI :
10.1109/COGINF.2010.5599675