摘要

The multilabel paradigm has recently attracted the attention of the machine learning community, multilabel problems being those which do not have only one class but several binomial classes instead. Although intensive research has been carried on lately into the multilabel classification paradigm, this is not the case of feature subset selection methods. In this work, we propose an adaptation of the well-known CMIM feature selection algorithm, which is capable of approximating the conditional multivariate mutual information of each candidate attribute with respect to the whole set of labels. This capacity to search any degree of interaction among labels is the reason why our proposal performs better than other state-of-the-art algorithms when the dataset on which it is run contains correlated labels.

  • 出版日期2018-2