理解和表述支持向量机的各种核技术

P. Bohra, Dr Hemant Palivela
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引用次数: 1

摘要

支持向量机(SVM)是一种监督学习算法,可用于分析模式和分类数据。该算法既适用于二类分类,也适用于多类分类。其核心思想是建立一个可以很容易地分离训练样本的超平面。对于二值类,SVM构建了一个超平面,可以很容易地将d维训练样本完美地分离为2类。但是有时候,训练样本不是线性可分的。因此,对于非线性训练样例,SVM引入核函数,将数据转换为高维空间,使数据可以线性分离。为了最小化测试误差和提高分类精度,使用了核函数。本文解释了核在支持向量机中的应用,并提供了有关这些核的性质和它们可以使用的情况的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding and formulation of various kernel techniques for suport vector machines
Support Vector Machines (SVM's) are supervised learning algorithms which can be used for analyzing patterns and classifying data. This supervised algorithm is applicable for binary class as well as multiclass classification. The core idea is to build a hyperplane which can easily separate the training examples. For binary class, SVM constructs a hyper-plane which can easily separate d-dimensional training examples perfectly into 2-classes. but sometimes, the training examples are not linearly separable. Thus, for non-linear training examples, SVM introduced Kernel functions which transforms the data into high dimensional space where the data can be separated linearly. For minimizing the test error and for improving classification accuracy, kernels functions are used. This paper explains applications of kernels in support vector machine and provide information about the properties of these kernels and situations in which they can be used.
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