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BOOSTING ONE-CLASS SUPPORT VECTOR MACHINES FOR MULTI-CLASS CLASSIFICATION

机译:引导一类支持向量机以进行多类分类

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摘要

AdaBoost.M1 has been successfully applied to improve the accuracy of a learning algorithm for multi-class classification problems. However, it may be hard to satisfy the required conditions in some practical cases. An improved algorithm called AdaBoost.MK is developed to solve this problem. Early proposed support vector machines (SVM)-based, multi-class classification algorithms work by splitting the original problem into a set of two-class subproblems. The amount of time and space required by these algorithms is very demanding. We develop a multi-class classification algorithm by incorporating one-class SVMs with a well-designed discriminant function. Finally, a hybrid method integrating AdaBoost.MK and one-class SVMs is proposed to solve multi-class classification problems. Experimental results on data sets from UCI and Statlog show that the proposed approach outperforms other multi-class algorithms, such as support vector data descriptions (SVDDs) and AdaBoost.MI with one-class SVMs, and the improvement is found lo be statistically significant.
机译:AdaBoost.M1已成功应用于提高针对多类分类问题的学习算法的准确性。但是,在某些实际情况下可能难以满足所需条件。为解决此问题,开发了一种称为AdaBoost.MK的改进算法。早期提出的基于支持向量机(SVM)的多类分类算法通过将原始问题分解为一组两类子问题来工作。这些算法所需的时间和空间量非常苛刻。我们通过将一类支持向量机与经过精心设计的判别函数相结合,开发出一种多类分类算法。最后,提出了一种将AdaBoost.MK与一类SVM集成的混合方法来解决多类分类问题。针对UCI和Statlog数据集的实验结果表明,该方法优于其他多类算法,例如支持向量数据描述(SVDD)和具有一类SVM的AdaBoost.MI,并且发现该改进具有统计学意义。

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  • 来源
    《Applied Artificial Intelligence》 |2009年第4期|297-315|共19页
  • 作者单位

    Department of Electrical Engineering, National Sun Yat-Sen University, Kaohsiung, Taiwan;

    Department of Electrical Engineering, National Sun Yat-Sen University, Kaohsiung, Taiwan;

    Department of Electrical Engineering, National Sun Yat-Sen University, Kaohsiung, Taiwan;

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