DocumentCode :
1432019
Title :
Semisupervised Metric Learning by Maximizing Constraint Margin
Author :
Wang, Fei
Author_Institution :
IBM T. J. Watson Res. Lab., Yorktown Heights, NY, USA
Volume :
41
Issue :
4
fYear :
2011
Firstpage :
931
Lastpage :
939
Abstract :
Distance-metric learning is an old problem that has been researched in the supervised-learning field for a very long time. In this paper, we consider the problem of learning a proper distance metric under the guidance of some weak supervisory information. Specifically, this information is in the form of pairwise constraints which specify whether a pair of data points is in the same class ( must-link constraints) or in different classes ( cannot-link constraints). Given those constraints, our algorithm aims to learn a distance metric under which the points with must-link constraints are pushed as close as possible, while simultaneously, the points with cannot-link constraints are pulled away as far as possible. The kernelized version of our algorithm is also derived to tackle the nonlinear problem. Moreover, since in many cases, the data objects, such as images and videos, are more naturally represented as higher order tensors than vectors, we also extend our algorithm to learn the metrics directly from the tensors. Finally, experimental results are presented to show the effectiveness of our method.
Keywords :
constraint handling; data mining; learning (artificial intelligence); data objects; data points; distance-metric learning; kernelized version; nonlinear problem; pair-wise constraints; semisupervised metric learning; tensors; Clustering algorithms; Coordinate measuring machines; Current measurement; Eigenvalues and eigenfunctions; Symmetric matrices; Tensile stress; Constraint margin; distance metric learning; semisupervised;
fLanguage :
English
Journal_Title :
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
1083-4419
Type :
jour
DOI :
10.1109/TSMCB.2010.2101593
Filename :
5696766
Link To Document :
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