Journal Article10.1016/J.PATCOG.2011.05.009
Multiclass classification with potential function rules: Margin distribution and generalization
Fei Teng,Yixin Chen,Xin Dang +2 more
TL;DR: A bound on the generalization performance of multiclass potential function classifiers is derived based on the observed margin distribution of the training data and a new model selection criterion using a normalized margin distribution is proposed to learn ''good'' potential functionclassifiers in practice.
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About: This article is published in Pattern Recognition. The article was published on 01 Jan 2012. The article focuses on the topics: Multiclass classification.
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