SVM分类理论与算法的若干新进展
Some Advances in Theory and Algorithm for SVM
DOI: 10.12677/AAM.2021.1012483, PDF,   
作者: 岳朝霞:内蒙古大学数学科学学院,内蒙古 呼和浩特;刘 甲:辽宁师范大学数学学院,辽宁 大连
关键词: 支持向量机二分类模型算法SVM Binary Classification Model Algorithm
摘要: 支持向量机(Support Vector Machine, SVM)一直是处理二分类问题的重要工具,被广泛应用于机器学习、图像处理、生物信息等众多领域。自从1995年Vapnik和Cortes提出以来,经过多年的发展,国内外产生了丰富的研究成果。为了进一步拓宽有关SVM问题的研究,本文对近年来SVM的发展从模型和算法两方面进行梳理。
Abstract: Support Vector Machine has always been an important tool to deal with binary classification problems, and is used in many fields widely, such as machine learning, image processing, and biological information. Since the proposal of Vapnik and Cortes in 1995, after years of development, rich research results have been produced at home and abroad. In order to further broaden the research on SVM issues, this paper sorts out the development of SVM in recent years from two aspects: model and algorithm.
文章引用:岳朝霞, 刘甲. SVM分类理论与算法的若干新进展[J]. 应用数学进展, 2021, 10(12): 4535-4541. https://doi.org/10.12677/AAM.2021.1012483

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