Yin Zhong, Wang Yongxiong, Liu Li, Zhang Wei, Zhang Jianhua
Shanghai Key Lab of Modern Optical System, Engineering Research Center of Optical Instrument and System, Ministry of Education, University of Shanghai for Science and TechnologyShanghai, China.
Department of Automation, East China University of Science and TechnologyShanghai, China.
Front Neurorobot. 2017 Apr 10;11:19. doi: 10.3389/fnbot.2017.00019. eCollection 2017.
Using machine-learning methodologies to analyze EEG signals becomes increasingly attractive for recognizing human emotions because of the objectivity of physiological data and the capability of the learning principles on modeling emotion classifiers from heterogeneous features. However, the conventional subject-specific classifiers may induce additional burdens to each subject for preparing multiple-session EEG data as training sets. To this end, we developed a new EEG feature selection approach, transfer recursive feature elimination (T-RFE), to determine a set of the most robust EEG indicators with stable geometrical distribution across a group of training subjects and a specific testing subject. A validating set is introduced to independently determine the optimal hyper-parameter and the feature ranking of the T-RFE model aiming at controlling the overfitting. The effectiveness of the T-RFE algorithm for such cross-subject emotion classification paradigm has been validated by DEAP database. With a linear least square support vector machine classifier implemented, the performance of the T-RFE is compared against several conventional feature selection schemes and the statistical significant improvement has been found. The classification rate and -score achieve 0.7867, 0.7526, 0.7875, and 0.8077 for arousal and valence dimensions, respectively, and outperform several recent reported works on the same database. In the end, the T-RFE based classifier is compared against two subject-generic classifiers in the literature. The investigation of the computational time for all classifiers indicates the accuracy improvement of the T-RFE is at the cost of the longer training time.
由于生理数据的客观性以及学习原理从异构特征中对情感分类器进行建模的能力,使用机器学习方法分析脑电图(EEG)信号在识别人类情感方面变得越来越有吸引力。然而,传统的特定于个体的分类器可能会给每个个体带来额外负担,因为需要准备多组EEG数据作为训练集。为此,我们开发了一种新的EEG特征选择方法,即转移递归特征消除(T-RFE),以确定一组最稳健的EEG指标,这些指标在一组训练个体和一个特定测试个体中具有稳定的几何分布。引入一个验证集来独立确定T-RFE模型的最优超参数和特征排名,旨在控制过拟合。T-RFE算法在此类跨个体情感分类范式中的有效性已通过DEAP数据库得到验证。通过实现线性最小二乘支持向量机分类器,将T-RFE的性能与几种传统特征选择方案进行了比较,并发现了具有统计学意义的显著改进。对于唤醒度和效价维度,分类率和得分分别达到0.7867、0.7526、0.7875和0.8077,优于同一数据库上最近报道的几项研究成果。最后,将基于T-RFE的分类器与文献中的两种通用个体分类器进行了比较。对所有分类器计算时间的研究表明,T-RFE的准确性提高是以更长的训练时间为代价的。