对支持向量机算法进行预处理以适应高斯数据的边缘先验和离群先验

Shaira Lee L. Pabalan, Louie John D. Vallejo
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引用次数: 0

摘要

支持向量机(SVM)算法是机器学习和统计学中最流行的分类方法之一。然而,在异常值的存在下,分类器可能会受到不利影响。在本文中,我们对无约束支持向量机算法的铰链损失函数进行了实验,以适应非线性可分高斯数据集的先验信息。首先,我们确定当铰链损失函数x≠max(0, α−x)有多个正α值时,其分类效果是否明显优于α = 1时的分类效果。然后,借鉴Huber最小信息分布模型对异常值回归进行脱敏处理,对铰链损失函数进行平滑处理,提高分类对异常值的不敏感性。使用统计分析,我们确定在某种显著性水平上,分类方面的错误分类数据数量有相当大的改进。支持向量机(SVM)算法是机器学习和统计学中最流行的分类方法之一。然而,在异常值的存在下,分类器可能会受到不利影响。在本文中,我们对无约束支持向量机算法的铰链损失函数进行了实验,以适应非线性可分高斯数据集的先验信息。首先,我们确定当铰链损失函数x≠max(0, α−x)有多个正α值时,其分类效果是否明显优于α = 1时的分类效果。然后,借鉴Huber最小信息分布模型对异常值回归进行脱敏处理,对铰链损失函数进行平滑处理,提高分类对异常值的不敏感性。使用统计分析,我们确定在某种显著性水平上,分类方面的错误分类数据数量有相当大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preconditioning the support vector machine algorithm to suit margin and outlier priors of Gaussian data
The Support Vector Machine (SVM) Algorithm is one of the most popular classification method in machine learning and statistics. However, in the presence of outliers, the classifier may be adversely affected. In this paper, we experiment on the hinge loss function of the unconstrained SVM Algorithm to suit prior information about nonlinearly separable sets of Gaussian data. First, we determine if an altered hinge loss function x ↦ max(0, α − x) with several positive values of α will be significantly better in classification compared when α = 1. Then, taking an inspiration from Huber’s least informative distribution model to desensitize regression from outliers, we smoothen the hinge loss function to promote insensitivity of the classification to outliers. Using statistical analysis, we determine that at some level of significance, there is a considerable improvement in classification with respect to the number of misclassified data.The Support Vector Machine (SVM) Algorithm is one of the most popular classification method in machine learning and statistics. However, in the presence of outliers, the classifier may be adversely affected. In this paper, we experiment on the hinge loss function of the unconstrained SVM Algorithm to suit prior information about nonlinearly separable sets of Gaussian data. First, we determine if an altered hinge loss function x ↦ max(0, α − x) with several positive values of α will be significantly better in classification compared when α = 1. Then, taking an inspiration from Huber’s least informative distribution model to desensitize regression from outliers, we smoothen the hinge loss function to promote insensitivity of the classification to outliers. Using statistical analysis, we determine that at some level of significance, there is a considerable improvement in classification with respect to the number of misclassified data.
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