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Support Vector Machine for Nonparametric Binary Hypothesis Testing

机译:支持非参数二进制假设检测的向量机

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The Support Vector Machine, introduced in [1] as a practical implementation of the principle of structural risk minimization, constitutes one of the most promising methods for constructing a mathematical model only on the base of a limited amount of measured data. In this paper, we consider the application of this method to the problem of nonparamet-ric binary hypothesis testing (bayesian setting); the main contribution of this paper is the derivation of the Support Vector algorithm in the case of a generic convex approximation of the binary risk function.
机译:在[1]中引入的支持向量机作为结构风险最小化原理的实际实现,构成了仅在有限数量的测量数据的基础上构建数学模型的最有希望的方法之一。在本文中,我们考虑这种方法在非参加非参差糟的二元假设检测问题(贝叶斯环境)中的应用;本文的主要贡献是在二进制风险函数的通用凸起近似的情况下推导支持向量算法。

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