Literature DB >> 19963702

Joint learning of labels and distance metric.

Bo Liu1, Meng Wang, Richang Hong, Zhengjun Zha, Xian-Sheng Hua.   

Abstract

Machine learning algorithms frequently suffer from the insufficiency of training data and the usage of inappropriate distance metric. In this paper, we propose a joint learning of labels and distance metric (JLLDM) approach, which is able to simultaneously address the two difficulties. In comparison with the existing semi-supervised learning and distance metric learning methods that focus only on label prediction or distance metric construction, the JLLDM algorithm optimizes the labels of unlabeled samples and a Mahalanobis distance metric in a unified scheme. The advantage of JLLDM is multifold: 1) the problem of training data insufficiency can be tackled; 2) a good distance metric can be constructed with only very few training samples; and 3) no radius parameter is needed since the algorithm automatically determines the scale of the metric. Extensive experiments are conducted to compare the JLLDM approach with different semi-supervised learning and distance metric learning methods, and empirical results demonstrate its effectiveness.

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Year:  2009        PMID: 19963702     DOI: 10.1109/TSMCB.2009.2034632

Source DB:  PubMed          Journal:  IEEE Trans Syst Man Cybern B Cybern        ISSN: 1083-4419


  2 in total

1.  Adaptive distance metric learning for diffusion tensor image segmentation.

Authors:  Youyong Kong; Defeng Wang; Lin Shi; Steve C N Hui; Winnie C W Chu
Journal:  PLoS One       Date:  2014-03-20       Impact factor: 3.240

2.  Development and validation of consensus machine learning-based models for the prediction of novel small molecules as potential anti-tubercular agents.

Authors:  Mushtaq Ahmad Wani; Kuldeep K Roy
Journal:  Mol Divers       Date:  2021-06-10       Impact factor: 2.943

  2 in total

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