Large-margin feature selection for monotonic classification

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摘要

Monotonic classification plays an important role in the field of decision analysis, where decision values are ordered and the samples with better feature values should not be classified into a worse class. The monotonic classification tasks seem conceptually simple, but difficult to utilize and explain the order structure in practice. In this work, we discuss the issue of feature selection under the monotonicity constraint based on the principle of large margin. By introducing the monotonicity constraint into existing margin based feature selection algorithms, we design two new evaluation algorithms for monotonic classification. The proposed algorithms are tested with some artificial and real data sets, and the experimental results show its effectiveness.

论文关键词:Monotonic classification,Ordinal classification,Monotonicity constraint,Feature selection,Classification margin

论文评审过程:Received 2 August 2010, Revised 13 January 2012, Accepted 13 January 2012, Available online 30 January 2012.

论文官网地址:https://doi.org/10.1016/j.knosys.2012.01.011