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首页> 外文期刊>Journal of University of Science and Technology Beijing >Online LS-SVM for function estimation and classification
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Online LS-SVM for function estimation and classification

机译:在线LS-SVM用于功能估计和分类

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An online algorithm for training LS-SVM (Least Square Support Vector Machines) was proposed for the application of function estimation and classification. Online LS-SVM means that LS-SVM can be trained in an incremental way, and can be pruned to get sparse approximation in a decremental way. When a SV (Support Vector) is added or removed, the online algorithm avoids computing large-scale matrix inverse. Thus the computation cost is reduced. Online algorithm is especially useful to realistic function estimation problem such as system identification. The experiments with benchmark function estimation problem and classification problem show the validity of this online algorithm.
机译:提出了一种在线训练最小二乘支持向量机(LS-SVM)的算法,用于功能估计和分类。在线LS-SVM意味着LS-SVM可以以增量方式进行训练,并且可以被修剪以以递减的方式获得稀疏近似。添加或删除SV(支持向量)时,在线算法可避免计算大规模矩阵逆。因此减少了计算成本。在线算法对于现实的功能估计问题(例如系统识别)特别有用。通过基准函数估计问题和分类问题的实验证明了该在线算法的有效性。

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