Title of article :
Distance metric learning by minimal distance maximization
Author/Authors :
Yu، نويسنده , , Yaoliang and Jiang، نويسنده , , Jiayan and Zhang، نويسنده , , Liming، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
11
From page :
639
To page :
649
Abstract :
Classic linear dimensionality reduction (LDR) methods, such as principal component analysis (PCA) and linear discriminant analysis (LDA), are known not to be robust against outliers. Following a systematic analysis of the multi-class LDR problem in a unified framework, we propose a new algorithm, called minimal distance maximization (MDM), to address the non-robustness issue. The principle behind MDM is to maximize the minimal between-class distance in the output space. MDM is formulated as a semi-definite program (SDP), and its dual problem reveals a close connection to “weighted” LDR methods. A soft version of MDM, in which LDA is subsumed as a special case, is also developed to deal with overlapping centroids. Finally, we drop the homoscedastic Gaussian assumption made in MDM by extending it in a non-parametric way, along with a gradient-based convex approximation algorithm to significantly reduce the complexity of the original SDP. The effectiveness of our proposed methods are validated on two UCI datasets and two face datasets.
Keywords :
Linear dimensionality reduction (LDR) , Convex optimization , Metric learning , Minimal distance maximization
Journal title :
PATTERN RECOGNITION
Serial Year :
2011
Journal title :
PATTERN RECOGNITION
Record number :
1733956
Link To Document :
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