Co-Training Using Rbf Nets And Different Feature Splits

The 2006 IEEE International Joint Conference on Neural Network Proceedings(2006)

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摘要
In this paper we propose a new graph-based feature splitting algorithm maxInd, which creates a balanced split maximizing the independence between the two feature sets. We study the performance of RBF net in a co-training setting with natural, truly independent, random and maxInd split. The results show that RBF net is successful in a co-training setting, outperforming SVM and NB. Co-training is also found to be sensitive to the trade-off between the dependence of the features within a feature set, and the dependence between the feature sets.
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关键词
graph theory,pattern classification,radial basis function networks,unsolicited e-mail,co-training,graph-based feature splitting algorithm,maxlnd,radial basis function network,spam email classification,
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