A robust twin support vector machine based on fuzzy systems

IF 2.2 Q3 COMPUTER SCIENCE, CYBERNETICS International Journal of Intelligent Computing and Cybernetics Pub Date : 2023-09-18 DOI:10.1108/ijicc-08-2023-0208
Jianxiang Qiu, Jialiang Xie, Dongxiao Zhang, Ruping Zhang
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Abstract

Purpose Twin support vector machine (TSVM) is an effective machine learning technique. However, the TSVM model does not consider the influence of different data samples on the optimal hyperplane, which results in its sensitivity to noise. To solve this problem, this study proposes a twin support vector machine model based on fuzzy systems (FSTSVM). Design/methodology/approach This study designs an effective fuzzy membership assignment strategy based on fuzzy systems. It describes the relationship between the three inputs and the fuzzy membership of the sample by defining fuzzy inference rules and then exports the fuzzy membership of the sample. Combining this strategy with TSVM, the FSTSVM is proposed. Moreover, to speed up the model training, this study employs a coordinate descent strategy with shrinking by active set. To evaluate the performance of FSTSVM, this study conducts experiments designed on artificial data sets and UCI data sets. Findings The experimental results affirm the effectiveness of FSTSVM in addressing binary classification problems with noise, demonstrating its superior robustness and generalization performance compared to existing learning models. This can be attributed to the proposed fuzzy membership assignment strategy based on fuzzy systems, which effectively mitigates the adverse effects of noise. Originality/value This study designs a fuzzy membership assignment strategy based on fuzzy systems that effectively reduces the negative impact caused by noise and then proposes the noise-robust FSTSVM model. Moreover, the model employs a coordinate descent strategy with shrinking by active set to accelerate the training speed of the model.
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基于模糊系统的鲁棒双支持向量机
目的双支持向量机(TSVM)是一种有效的机器学习技术。然而,TSVM模型没有考虑不同数据样本对最优超平面的影响,导致其对噪声比较敏感。为了解决这个问题,本研究提出了一种基于模糊系统的双支持向量机模型(FSTSVM)。本研究设计了一种有效的基于模糊系统的模糊隶属度分配策略。它通过定义模糊推理规则来描述三个输入与样本模糊隶属度之间的关系,然后导出样本的模糊隶属度。将该策略与TSVM相结合,提出了FSTSVM。此外,为了加快模型的训练速度,本研究采用了主动集收缩的坐标下降策略。为了评估FSTSVM的性能,本研究在人工数据集和UCI数据集上进行了实验设计。实验结果证实了FSTSVM在解决带噪声的二值分类问题上的有效性,与现有的学习模型相比,FSTSVM具有更好的鲁棒性和泛化性能。这主要得益于本文提出的基于模糊系统的模糊隶属度分配策略,有效地减轻了噪声的不利影响。本研究设计了一种基于模糊系统的模糊隶属度分配策略,有效降低了噪声带来的负面影响,并提出了具有噪声鲁棒性的FSTSVM模型。此外,该模型采用主动集收缩的坐标下降策略,加快了模型的训练速度。
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来源期刊
CiteScore
6.80
自引率
4.70%
发文量
26
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