{"title":"A novel interval-valued fuzzy multiple twin support vector machine","authors":"H. Ju, W. Qiang, Ling Jing","doi":"10.22111/IJFS.2021.5916","DOIUrl":null,"url":null,"abstract":"Multiple twin support vector machine (MTSVM) which evaluates all the training data into a ``one-versus-rest'' structure is a multi-class classification algorithm. It has extensive applications in the multi-class classification problems. Like twin support vector machine (TSVM), MTSVM treats all sample points equally because it lacks the ability to judge the importance of different sample points. In order to improve the classification performance of MTSVM, a new method of adding interval-valued fuzzy membership degree to sample points is proposed. In this way, a novel interval-valued fuzzy multiple twin support vector machine (IVF-MTSVM) is established in this paper. Previous methods of adding fuzzy membership degree to sample points are totally based on their importance to the class, while the method in this paper emphasizes the importance of sample points to the classification model, and takes into account the importance to the class to some extent. This is a new perspective to establish fuzzy membership degree to sample points in support vector machines since it is different from the previous methods in thinking. Then the solution to IVF-MTSVM is derived. Experiments on UCI datasets show that this new method has certain advantages over other multi-class twin support vector machine methods in ``one-versus-rest'' structure and other fuzzy multiple twin support vector machine established by some previous methods. Finally, Friedman test and Benferroni-Dunn test are used to verify the statistical significance of this new method.","PeriodicalId":54920,"journal":{"name":"Iranian Journal of Fuzzy Systems","volume":"23 1","pages":"93-107"},"PeriodicalIF":1.9000,"publicationDate":"2021-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Iranian Journal of Fuzzy Systems","FirstCategoryId":"100","ListUrlMain":"https://doi.org/10.22111/IJFS.2021.5916","RegionNum":4,"RegionCategory":"数学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"MATHEMATICS","Score":null,"Total":0}
引用次数: 1
Abstract
Multiple twin support vector machine (MTSVM) which evaluates all the training data into a ``one-versus-rest'' structure is a multi-class classification algorithm. It has extensive applications in the multi-class classification problems. Like twin support vector machine (TSVM), MTSVM treats all sample points equally because it lacks the ability to judge the importance of different sample points. In order to improve the classification performance of MTSVM, a new method of adding interval-valued fuzzy membership degree to sample points is proposed. In this way, a novel interval-valued fuzzy multiple twin support vector machine (IVF-MTSVM) is established in this paper. Previous methods of adding fuzzy membership degree to sample points are totally based on their importance to the class, while the method in this paper emphasizes the importance of sample points to the classification model, and takes into account the importance to the class to some extent. This is a new perspective to establish fuzzy membership degree to sample points in support vector machines since it is different from the previous methods in thinking. Then the solution to IVF-MTSVM is derived. Experiments on UCI datasets show that this new method has certain advantages over other multi-class twin support vector machine methods in ``one-versus-rest'' structure and other fuzzy multiple twin support vector machine established by some previous methods. Finally, Friedman test and Benferroni-Dunn test are used to verify the statistical significance of this new method.
多孪生支持向量机(Multiple twin support vector machine, MTSVM)是一种多类分类算法,它将所有训练数据评估为“一对余”结构。它在多类分类问题中有着广泛的应用。与双支持向量机(TSVM)一样,由于缺乏判断不同样本点重要性的能力,MTSVM对所有样本点一视同仁。为了提高MTSVM的分类性能,提出了在样本点上加入区间值模糊隶属度的新方法。在此基础上,建立了一种新的区间值模糊多孪生支持向量机。以往对样本点添加模糊隶属度的方法完全是基于样本点对类的重要性,而本文的方法强调了样本点对分类模型的重要性,并在一定程度上考虑了样本点对类的重要性。在思路上不同于以往的方法,为支持向量机中样本点模糊隶属度的建立提供了一个新的视角。然后推导了IVF-MTSVM的解。在UCI数据集上的实验表明,该方法在“one- against -rest”结构和其他一些方法建立的模糊多类双胞胎支持向量机方面,比其他多类双胞胎支持向量机方法具有一定的优势。最后利用Friedman检验和Benferroni-Dunn检验验证了新方法的统计显著性。
期刊介绍:
The two-monthly Iranian Journal of Fuzzy Systems (IJFS) aims to provide an international forum for refereed original research works in the theory and applications of fuzzy sets and systems in the areas of foundations, pure mathematics, artificial intelligence, control, robotics, data analysis, data mining, decision making, finance and management, information systems, operations research, pattern recognition and image processing, soft computing and uncertainty modeling.
Manuscripts submitted to the IJFS must be original unpublished work and should not be in consideration for publication elsewhere.