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Multiple Kernel Support Vector Machine Problem Is NP-Complete

机译:多个内核支持向量机问题是np-complete

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In this work a polynomial-time reduction to the NP-complete subset sum problem is followed in order to prove the complexity of Multiple Kernel Support Vector Machine decision problem. The Lagrangian function of the standard Support Vector Machine in its dual form was considered to derive the proof. Results of this derivation allow researchers to properly justify the use of approximate methods, such as heuristics and metaheuristics, when working with multiple kernel learning algorithms.
机译:在这项工作中,遵循对NP完整子集和问题的多项式减少,以便证明多个内核支持向量机决策问题的复杂性。标准支持向量机以其双重形式的拉格朗日功能被认为是导出证明。当使用多个内核学习算法时,该衍生的结果允许研究人员正确地证明使用近似方法,例如启发式方法和成群制。

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