Automatic model selection method for support vector machines classifiers
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摘要: 提出了一種基于粗網格與模式搜索相結合的支持向量機分類器模型參數優化方法,采用Jaakkola-Haussler誤差上界作為模型選擇的評價標準。以黎曼幾何為理論依據,提出了一種新的保角變換,對核函數進行數據依賴性改進,進一步提高分類器泛化能力。在研究人工非線性分類問題的基礎上,將該方法應用于手寫相似漢字識別,實驗結果表明分類精度得到了明顯提高。Abstract: An optimal approach was presented for model parameters of a support vector machine classifier based on coarse grid search combined with pattern search, in which the Jaakkola-Haussler error bound was considered as the evaluation criterion of model selection. Based on the Riemannian geometry theory, a novel conformal transformation was proposed and the kernel function was modified by the transformation in a data-dependent way. Simulated results for the artificial data set showed that the approach for automatic model selection was very effective. An application of the approach in handwritten similar Chinese characters recognition was further investigated. The experimental result showed remarkable improvement of the performance of the classifier.
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