Distance metric learning for ordinal classification based on triplet constraints
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摘要
Ordinal classification is a problem setting in-between nominal classification and metric regression, where the goal is to predict classes of an ordinal scale. Usually, there is a clear ordering of the classes, but the absolute distances between them are unknown. Disregarding the ordering information, this kind of problems is commonly treated as multi-class classification problems, however, it often results in a significant loss of performance. Exploring such ordering information can help to improve the effectiveness of classifiers. In this paper, we propose a distance metric learning approach for ordinal classification by incorporating local triplet constraints containing the ordering information into a conventional large-margin distance metric learning approach. Specifically, our approach tries to preserve, for each training example, the ordinal relationship as well as the local geometry structure of its neighbors, which is suitable for use in local distance-based algorithms such as k-nearest-neighbor (k-NN) classification. Different from previous works that usually learn distance metrics by weighing the distances between training examples according to their class label differences, the proposed approach can directly satisfy the ordinal relationships where no assumptions about the distances between classes are made.
论文关键词:Ordinal classification,Ordinal regression,Distance metric learning,Nearest neighbor,Semidefinite programming
论文评审过程:Received 31 July 2017, Revised 14 October 2017, Accepted 21 November 2017, Available online 22 November 2017, Version of Record 17 January 2018.
论文官网地址:https://doi.org/10.1016/j.knosys.2017.11.022