Department of Computer Science and Engineering, National Institute of Technology, Arunachal Pradesh 791112, India.
Department of Computer Science and Engineering, National Institute of Technology, Arunachal Pradesh 791112, India.
Comput Methods Programs Biomed. 2021 Sep;208:106244. doi: 10.1016/j.cmpb.2021.106244. Epub 2021 Jun 24.
The detection of brain-related problems and neurological disorders like epilepsy, sleep disorder, and so on is done by using electroencephalogram (EEG) signals which contain noisy signals and outliers. Universum data contains a set of a sample that does not belong to any of the concerned classes and serves as the advanced knowledge about the data distribution. Earlier information has been utilized viably in improving classification performance. Recently a novel universum support vector machine (USVM) was proposed for EEG signal classification and further, a universum twin support vector machine (UTWSVM) was proposed based on USVM to improve the performance. Inspired by USVM and UTWSVM, this paper suggests a novel method called universum based Lagrangian twin bounded support vector machine (ULTBSVM), where universum data is utilized to incorporate the prior information about the data distribution to classify healthy and seizure EEG signals.
In the proposed ULTBSVM the square of the 2-norm of the slack variables is used to formulate the objective function strongly convex; hence it always gives unique solutions. Unlike twin support vector machine (TWSVM) and universum twin support vector machine (UTWSVM), the proposed ULTBSVM is having regularization terms that follow the structural risk minimization (SRM) principle and enhance the stability in the dual formulations, make the model well-posed and prevents the overfitting problem. Here, interracial EEG data have been considered as universum data to classify healthy and seizure signals. Several feature extraction techniques have been implemented to get important noiseless features.
Several EEG datasets, as well as publicly available UCI datasets, are utilized to assess the performance of the proposed method. An analytical comparison has been performed of the proposed method with USVM and UTWSVM to detect seizure and healthy signals and for real-world data, the ULTBSVM is compared with the universum based models as well as TWSVM and the proposed method gives better results in most of the cases as compared to the other methods.
The results clearly show that ULTBSVM is a potential method for the classification of EEG signals as well as real-world datasets having interracial data as universum data. Here we have used universum points for the binary class classification problem, but one can extend and use it for multi-class classification problems as well.
脑电图(EEG)信号中包含噪声信号和异常值,可用于检测与大脑相关的问题和神经障碍,如癫痫、睡眠障碍等。Universum 数据包含一组不属于任何相关类别的样本,作为数据分布的高级知识。早期的信息已经被有效地利用来提高分类性能。最近,一种新的 Universum 支持向量机(USVM)被提出用于 EEG 信号分类,进一步提出了基于 USVM 的 Universum 孪生支持向量机(UTWSVM)来提高性能。受 USVM 和 UTWSVM 的启发,本文提出了一种新的方法,称为基于 Universum 的 Lagrangian 孪生有界支持向量机(ULTBSVM),该方法利用 Universum 数据来整合关于数据分布的先验信息,从而对健康和癫痫 EEG 信号进行分类。
在提出的 ULTBSVM 中,使用了松弛变量的 2-范数的平方来构建目标函数,使其具有强凸性,因此总是给出唯一的解。与孪生支持向量机(TWSVM)和 Universum 孪生支持向量机(UTWSVM)不同,所提出的 ULTBSVM 具有遵循结构风险最小化(SRM)原理的正则化项,增强了对偶形式的稳定性,使模型有良好的定义,并防止了过拟合问题。在这里,将 EEG 数据作为 Universum 数据来分类健康和癫痫信号。实现了几种特征提取技术来获取重要的无噪声特征。
利用多个 EEG 数据集和公共 UCI 数据集来评估所提出方法的性能。对所提出的方法与 USVM 和 UTWSVM 进行了分析比较,以检测癫痫和健康信号,对于实际数据,将 ULTBSVM 与基于 Universum 的模型以及 TWSVM 进行了比较,在所提出的方法在大多数情况下都优于其他方法。
结果清楚地表明,ULTBSVM 是一种用于 EEG 信号分类以及具有 interracial 数据作为 Universum 数据的实际数据集的潜在方法。在这里,我们使用 Universum 点来解决二进制分类问题,但也可以将其扩展并用于多类分类问题。