This paper considers feature selection in a multiclass classification scenario where the goal is to determine a subset of available features which is most discriminative and informative for all the classes simultaneously. Based on the data distributions of classes in the feature space, this paper first presents a model selection criterion named multiclass kernel polarization (MKP) to evaluate the goodness of a kernel in multiclass classification scenario, and then optimizes the scale factors assigned to each feature in a kernel by maximizing this criterion to identify the more relevant features. The proposed method is demonstrated with two UCI machine learning benchmark examples.
Tinghua WangFulai LiuMang XiaoJunting Chen
Mathieu RamonaG. RichardB. David
Ali Foroughi pourLori A. Dalton