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SVM--ICA-and-PCA-and-NN

所属分类:matlab编程
开发工具:matlab
文件大小:23KB
下载次数:10
上传日期:2016-06-12 23:00:38
上 传 者Donoho
说明:  SVM,ICA,PCA,NN等等模式识别算法,很有参考
(SVM, ICA and PCA and NN, and so on pattern recognition algorithm, is of great reference value)

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