使无限核学习实用

Ingo Mierswa
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引用次数: 7

摘要

本文将进化计算嵌入到统计学习理论中。首先,我们概述了大余量优化和统计学习之间的联系,并了解为什么这种范式在许多模式识别问题上是成功的。然后,我们将进化计算嵌入到这类学习方法的最突出代表中,即支持向量机(SVM)中。与以前进化算法在支持向量机中的应用相比,我们不仅优化了方法或核参数。我们宁愿使用进化策略来直接解决所提出的约束优化问题。将问题转化为Wolfe对偶减少了总运行时间,并允许像传统支持向量机一样使用核函数。就泛化性能而言,我们将展示进化支持向量机在八个真实世界基准数据集上至少与二次规划对应的支持向量机一样准确。在原始优化问题上,它们总是优于传统方法。此外,所提出的算法比现有的传统解决方案更具通用性,因为它也适用于非正半定或不定核函数。在使用这种不定核函数的情况下,进化支持向量机变体通常优于其二次规划竞争对手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Making Indefinite Kernel Learning Practical
In this paper we embed evolutionary computation into statistical learning theory. First, we outline the connection between large margin optimization and statistical learning and see why this paradigm is successful for many pattern recognition problems. We then embed evolutionary computation into the most prominent representative of this class of learning methods, namely into Support Vector Machines (SVM). In contrast to former applications of evolutionary algorithms to SVM we do not only optimize the method or kernel parameters. We rather use evolution strategies in order to directly solve the posed constrained optimization problem. Transforming the problem into the Wolfe dual reduces the total runtime and allows the usage of kernel functions just as for traditional SVM. We will show that evolutionary SVM are at least as accurate as their quadratic programming counterparts on eight real-world benchmark data sets in terms of generalization performance. They always outperform traditional approaches in terms of the original optimization problem. Additionally, the proposed algorithm is more generic than existing traditional solutions since it will also work for non-positive semidefinite or indefinite kernel functions. The evolutionary SVM variants frequently outperform their quadratic programming competitors in cases where such an indefinite Kernel function is used.
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