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A Scatter-Based Prototype Framework and Multi-Class Extension of Support Vector Machines

机译:分散基于原型框架和支持向量机的多类扩展

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摘要

We provide a novel interpretation of the dual of support vector machines (SVMs) in terms of scatter with respect to class prototypes and their mean. As a key contribution, we extend this framework to multiple classes, providing a new joint Scatter SVM algorithm, at the level of its binary counterpart in the number of optimization variables. This enables us to implement computationally efficient solvers based on sequential minimal and chunking optimization. As a further contribution, the primal problem formulation is developed in terms of regularized risk minimization and the hinge loss, revealing the score function to be used in the actual classification of test patterns. We investigate Scatter SVM properties related to generalization ability, computational efficiency, sparsity and sensitivity maps, and report promising results.
机译:我们提供了关于支持向量机(SVM)双重性的新颖解释,即关于类原型及其均值的分散性。作为一个重要的贡献,我们将此框架扩展到多个类,提供了新的联合Scatter SVM算法,其优化变量数量与二进制对应。这使我们能够基于顺序最小和分块优化来实现计算效率高的求解器。作为进一步的贡献,主要问题的表达是根据有规律的风险最小化和铰链损失而开发的,揭示了要在测试模式的实际分类中使用的评分函数。我们研究与泛化能力,计算效率,稀疏性和敏感性图有关的Scatter SVM属性,并报告令人鼓舞的结果。

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