Integrating nonlinear graph based dimensionality reduction schemes with SVMs for credit rating forecasting
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摘要
By integrating graph based nonlinear dimensionality reduction with support vector machines (SVMs), this study develops a novel prediction model for credit ratings forecasting. SVMs have been successfully applied in numerous areas, and have demonstrated excellent performance. However, due to the high dimensionality and nonlinear distribution of the input data, this study employed a kernel graph embedding (KGE) scheme to reduce the dimensionality of input data, and enhance the performance of SVM classifiers. Empirical results indicated that one-vs-one SVM with KGE outperforms other multi-class SVMs and traditional classifiers. Compared with other dimensionality reduction methods the performance improvement owing to KGE is significant.
论文关键词:Kernel graph embedding,Dimensionality reduction,Support vector machine,Multi-class classification,Credit rating
论文评审过程:Available online 26 September 2008.
论文官网地址:https://doi.org/10.1016/j.eswa.2008.09.047