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INCORPORATING PRIOR INFORMATION INTO SUPPORT VECTOR MACHINES IN THE FORM OF ELLIPSOIDAL KNOWLEDGE SETS

机译:以椭圆知识集的形式结合到支持向量机中的支持向量机

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This paper investigates a learning model in which the training set contains prior information in the form of ellipsoidal knowledge sets. We handle this problem in a minimax setting, which consists of maximizing the worst-case ? minimum ? margin between the knowledge sets from the two classes and the decision surface. The problem is solved using an alternating optimization scheme and an active learning strategy, I.e., the training set is created progressively according to the prior information. Our approach is evaluated on toy examples and on a usual benchmark database. It is successfully compared to state-of-the-art techniques.
机译:本文调查了一个学习模型,其中培训集包含以椭圆知识集的形式的先前信息。我们在最小的情况下处理这个问题,其中包括最大化最坏情况?最低限度 ?从两个类和决策表面之间的知识套之间的边缘。使用交替的优化方案和主动学习策略,即,根据先前信息逐步创建训练集来解决问题。我们的方法是在玩具示例和通常的基准数据库上进行评估。它与最先进的技术相比成功。

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