Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4946610 | Neural Networks | 2017 | 39 Pages |
Abstract
Recently, ordinal regression, which predicts categories of ordinal scale, has received considerable attention. In this paper, we propose a new approach to solve ordinal regression problems within the learning vector quantization framework. It extends the previous approach termed ordinal generalized matrix learning vector quantization with a more suitable and natural cost function, leading to more intuitive parameter update rules. Moreover, in our approach the bandwidth of the prototype weights is automatically adapted. Empirical investigation on a number of datasets reveals that overall the proposed approach tends to have superior out-of-sample performance, when compared to alternative ordinal regression methods.
Related Topics
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Authors
Fengzhen Tang, Peter TiÅo,