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EFFECTIVE MULTI-CLASS SUPPORT VECTOR MACHINE CLASSIFICATION

机译:有效的多类支持向量机分类

摘要

An improved method of classifying examples into multiple categories using a binary vector machine (SVM) algorithm. In one preferred embodiment, the method includes the following steps: storing a plurality of user-defined categories in a memory of a computer; analyzing a plurality of training examples for each category so as to identify one or more features associated with each category; calculating at least one feature vector for each of the examples; transforming each of the at least one feature vectors so as to reflect information about all of the training examples; and building a SVM classifier for each one of the plurality of categories, wherein the process of building a SVM classifier further includes: assigning each of the examples in a first category to a first class and all other examples belonging to other categories to a second class, wherein if any one of the examples belongs to another category as well as the first category, such examples are assigned to the first class only; optimizing at least one tunable parameter of a SVM classifier for the first category, wherein the SVM classifier is trained using the first and second classes; and optimizing a function that converts the output of the binary SVM classifier into a probability of category membership.
机译:一种使用二进制向量机(SVM)算法将示例分类为多个类别的改进方法。在一个优选实施例中,该方法包括以下步骤:在计算机的存储器中存储多个用户定义的类别;分析针对每个类别的多个训练示例,以识别与每个类别相关联的一个或多个特征;为每个示例计算至少一个特征向量;变换至少一个特征向量中的每一个,以反映关于所有训练示例的信息;为所述多个类别中的每个类别建立SVM分类器,其中,建立SVM分类器的过程还包括:将第一类别中的每个示例分配给第一类别,并将属于其他类别的所有其他示例分配给第二类别。 ,其中,如果任何一个示例都属于另一个类别以及第一类别,则此类示例仅分配给第一类别;为第一类别优化SVM分类器的至少一个可调参数,其中使用第一和第二类别训练SVM分类器;优化将二进制SVM分类器的输出转换为类别隶属度的函数。

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