SEC-EnD:基于堆叠集成相关的情感检测特征选择方法

Sricheta Parui, D. Samanta, N. Chakravorty
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引用次数: 1

摘要

由于大脑信号是如此复杂,从脑电图信号中选择正确的特征已经成为一个主要的研究领域,如果你想获得可靠的发现,这一点仍然很重要。由于脑电数据具有极高的维数,往往存在冗余特征和维数诅咒,分类方法往往达不到预期结果。为了解决这些问题,我们使用了一些众所周知的特征选择技术,为情感识别选择了一个最佳特征集。但它们大多具有不稳定性,对于不同的训练子集,不同类型的特征选择方法效果最好。在本研究中,我们提供了一种基于堆叠集成相关的情感检测特征选择方法SEC-END,它可以将不同的特征选择方法组合和叠加以找到最佳特征。该方法采用三级特征选择技术,有助于对特征的选择进行微调。在集成了整个特征集之后,我们选取了每种方法共有的特征,并使用联合仲裁方法来消除不必要的特征。然后,使用随机森林、决策树、支持向量机和knn四种分类器对特征集进行测试。无论训练集和分类器是什么,特征子集在所有维度上的表现都优于其他最先进的技术。实验还对不同大小的脑电信号窗口进行了实验,以便识别出最佳的窗口大小,并用于进一步的实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEC-EnD: Stacked Ensemble Correlation-based Feature Selection Method for Emotion Detection
Because the brain signal is so complex, choosing the right features from the EEG signal has become a major area of research and is still important if you want to receive reliable findings. Due to the extremely high dimensionality of EEG data, redundant features and the dimensionality curse are frequently present, and the classification method frequently fails to produce the intended results. We have chosen an optimum feature set for emotion recognition using certain well-known feature selection techniques to address these issues. But most of them are unstable in nature, and for different training subsets, different types of feature selection methods work best. In this research, we provide SEC-END, a stacked ensemble correlation-based feature selection method for emotion detection that can combine and stack different feature selection methods to find the best features. This method has a 3-level feature selection technique, which helps to finetune the selection of features. After integrating the entire feature set, we took the features that each approach had in common and used the union quorum method to eliminate the features that were unnecessary. Then, using four classifiers-Random Forest, Decision Tree, SVM, and KNN-we tested the feature set. Regardless of the training set and classifier, the feature subset is outperforming other state-of-the-art techniques for all the dimensions. The experiment is also carried out with different sizes of windows for EEG signals so that the optimum window size can be recognized and used for further experiments.
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