IEEE Trans Cybern. 2023 Jul;53(7):4400-4409. doi: 10.1109/TCYB.2022.3165879. Epub 2023 Jun 15.
Fuzzy membership is an effective approach used in twin support vector machines (SVMs) to reduce the effect of noise and outliers in classification problems. Fuzzy twin SVMs (TWSVMs) assign membership weights to reduce the effect of outliers, however, it ignores the positioning of the input data samples and hence fails to distinguish between support vectors and noise. To overcome this issue, intuitionistic fuzzy TWSVM combined the concept of intuitionistic fuzzy number with TWSVMs to reduce the effect of outliers and distinguish support vectors from noise. Despite these benefits, TWSVMs and intuitionistic fuzzy TWSVMs still suffer from some drawbacks as: 1) the local neighborhood information is ignored among the data points and 2) they solve quadratic programming problems (QPPs), which is computationally inefficient. To overcome these issues, we propose a novel intuitionistic fuzzy weighted least squares TWSVMs for classification problems. The proposed approach uses local neighborhood information among the data points and also uses both membership and nonmembership weights to reduce the effect of noise and outliers. The proposed approach solves a system of linear equations instead of solving the QPPs which makes the model more efficient. We evaluated the proposed intuitionistic fuzzy weighted least squares TWSVMs on several benchmark datasets to show the efficiency of the proposed model. Statistical analysis is done to quantify the results statistically. As an application, we used the proposed model for the diagnosis of Schizophrenia disease.
模糊隶属度是一种在孪生支持向量机(Twin Support Vector Machines,简称 TWSVM)中用于减少分类问题中噪声和异常值影响的有效方法。模糊孪生支持向量机(Fuzzy Twin SVMs,简称 FTSVMs)通过分配隶属度权重来减少异常值的影响,但它忽略了输入数据样本的定位,因此无法区分支持向量和噪声。为了解决这个问题,直觉模糊孪生支持向量机将直觉模糊数的概念与 TWSVM 结合起来,以减少异常值的影响,并区分支持向量和噪声。尽管有这些优点,但 TWSVM 和直觉模糊 TWSVM 仍然存在一些缺点,例如:1)忽略了数据点之间的局部邻域信息,2)它们解决二次规划问题(Quadratic Programming Problem,简称 QPP),这在计算上效率低下。为了解决这些问题,我们提出了一种用于分类问题的新型直觉模糊加权最小二乘 TWSVM。该方法利用了数据点之间的局部邻域信息,同时使用隶属度和非隶属度权重来减少噪声和异常值的影响。该方法解决了一个线性方程组,而不是解决 QPP,这使得模型更加高效。我们在几个基准数据集上评估了所提出的直觉模糊加权最小二乘 TWSVM,以展示所提出模型的效率。通过统计分析来对结果进行量化。作为一个应用,我们使用所提出的模型来诊断精神分裂症疾病。