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The Research on Semi-supervised Support Vector Data Description Multi-classification Algorithm

机译:半监控支持向量数据的研究描述多分类算法

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Semi-supervised Support Vector Data Description multi-classification algorithm is presented, in order to solve less labeled data learning, difficulties in the implementation and poor results of semi-supervised multi-classification, which full use the distribution of information in of non-target samples. S3VDD-MC algorithm defines the degree of membership of non-target samples, in order to get the non-target samples' accepted labels or refused labels, on this basis, several super-spheres constructed, a k-classification problem is transformed into k SVDDs problem. Finally, the simulation results verify the effectiveness of the algorithm.
机译:半监督支持向量数据描述提供多分类算法,以解决较少标记的数据学习,实施的困难和半监督多分类的结果不佳,这完全使用了非目标的信息分布样品。 S3VDD-MC算法定义了非目标样本的成员资格,以便在此基础上获得非目标样本的接受标签或拒绝标签,构建了几个超级球体,将k分类问题转化为k SVDDS问题。最后,仿真结果验证了算法的有效性。

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