费雪判别与核

Hugh Murrell, K. Hashimoto, Daichi Takatori
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引用次数: 4

摘要

费雪在1938年首次引入了费雪线性判别法。随着支持向量机(SVM)和核技巧的普及,Fisher线性判别式的核化成为必然。塞巴斯蒂安·米卡(Sebastian Mika)在2002年完成了这项任务,这是他博士学位的一部分,而核化费雪判别法(KFD)现在构成了大型机器学习工具Shogun的一部分。在本文中,我们将介绍MathKFD包。我们将MathKFD应用于合成数据集,以演示通过核的非线性分类。我们还在机器学习文献中的数据集上测试性能。MathKFD的构造在风格上与Nilsson及其同事的MathSVM构造非常相似。我们希望这两个软件包和其他同类软件包最终能够集成在一起,形成一个基于内核的Mathematica机器学习环境。
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Fisher Discrimination with Kernels
Fisher first introduced the Fisher linear discriminant back in 1938. After the popularization of the support vector machine (SVM) and the kernel trick it became inevitable that the Fisher linear discriminant would be kernelized. Sebastian Mika accomplished this task as part of his Ph.D. in 2002 and the kernelized Fisher discriminant (KFD) now forms part of the largescale machine-learning tool Shogun. In this article we introduce the package MathKFD. We apply MathKFD to synthetic datasets to demonstrate nonlinear classification via kernels. We also test performance on datasets from the machine-learning literature. The construction of MathKFD follows closely in style the construction of MathSVM by Nilsson and colleagues. We hope these two packages and others of the same ilk will eventually be integrated to form a kernel-based machine-learning environment for Mathematica.
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