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Bias-Variance Analysis of Support Vector Machines for the Development of SVM-Based Ensemble Methods

机译:基于支持向量机的集成方法开发的支持向量机偏差方差分析

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Bias-variance analysis provides a tool to study learning algorithms and can be used to properly design ensemble methods well tuned to the properties of a specific base learner. Indeed the effectiveness of ensemble methods critically depends on accuracy, diversity and learning characteristics of base learners. We present an extended experimental analysis of bias-variance decomposition of the error in Support Vector Machines (SVMs), considering Gaussian, polynomial and dot product kernels. A characterization of the error decomposition is provided, by means of the analysis of the relationships between bias, variance, kernel type and its parameters, offering insights into the way SVMs learn. The results show that the expected trade-off between bias and variance is sometimes observed, but more complex relationships can be detected, especially in Gaussian and polynomial kernels. We show that the bias-variance decomposition offers a rationale to develop ensemble methods using SVMs as base learners, and we outline two directions for developing SVM ensembles, exploiting the SVM bias characteristics and the bias-variance dependence on the kernel parameters. color="gray">
机译:偏差方差分析提供了一种学习学习算法的工具,可用于正确设计适合特定基础学习者属性的集成方法。实际上,集成方法的有效性关键取决于基础学习者的准确性,多样性和学习特征。考虑到高斯,多项式和点积核,我们在支持向量机(SVM)中对误差的偏差方差分解进行了扩展的实验分析。通过对偏差,方差,内核类型及其参数之间的关系进行分析,可以提供错误分解的特征,从而深入了解SVM的学习方式。结果表明,有时可以观察到偏差和方差之间的期望权衡,但是可以检测到更复杂的关系,尤其是在高斯和多项式核中。我们证明了偏差方差分解为使用SVM作为基础学习者开发集成方法提供了原理,并且概述了开发SVM集成的两个方向,即利用SVM偏差特性和偏差对内核参数的依赖性。 =“ gray”>

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