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A sparse least squares support vector machine classifier

机译:稀疏最小二乘支持向量机分类器

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Since the early 90's, support vector machines (SVM) are attracting more and more attention due to their applicability to a large number of problems. To overcome the high computational complexity of traditional support vector machines, previously a new technique, the least squares SVM (LS-SVM) has been introduced, but unfortunately a very attractive feature of SVM, namely its sparseness, was lost. LS-SVM simplifies the required computation to solving linear equation set. This equation set embodies all available information about the learning process. By applying modifications to this equation set, we present a least squares version of the least squares support vector machine (LS/sup 2/-SVM). The proposed modification speeds up the calculations and provides better results, but most importantly it concludes a sparse solution.
机译:由于90年代初,支持向量机(SVM)由于其对大量问题的适用性而越来越多地引起越来越多的关注。为了克服传统支持向量机的高计算复杂性,先前的一种新技术,已经引入了最小的Squares SVM(LS-SVM),但遗憾的是SVM的非常有吸引力,即其稀疏,丢失。 LS-SVM简化了求解线性方程集所需的计算。该等式集体现了有关学习过程的所有可用信息。通过对该等式集的修改,我们提出了最小二乘支持向量机(LS / SUP 2 / -SVM)的最小二乘版本。建议的修改速度加快了计算并提供了更好的结果,但最重要的是它得出稀疏解决方案。

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