| Literature DB >> 25712913 |
Shuang Liu1, Di Zhang1, Minpeng Xu1, Hongzhi Qi2, Feng He1, Xin Zhao1, Peng Zhou1, Lixin Zhang1, Dong Ming3.
Abstract
There are numerous studies measuring the brain emotional status by analyzing EEGs under the emotional stimuli that have occurred. However, they often randomly divide the homologous samples into training and testing groups, known as randomly dividing homologous samples (RDHS), despite considering the impact of the non-emotional information among them, which would inflate the recognition accuracy. This work proposed a modified method, the integrating homologous samples (IHS), where the homologous samples were either used to build a classifier, or to be tested. The results showed that the classification accuracy was much lower for the IHS than for the RDHS. Furthermore, a positive correlation was found between the accuracy and the overlapping rate of the homologous samples. These findings implied that the overinflated accuracy did exist in those previous studies where the RDHS method was employed for emotion recognition. Moreover, this study performed a feature selection for the IHS condition based on the support vector machine-recursive feature elimination, after which the average accuracies were greatly improved to 85.71% and 77.18% in the picture-induced and video-induced tasks, respectively.Keywords: Affective computing; Electroencephalography (EEG); Emotion recognition; Feature selection; Overinflated accuracies; Valence
Mesh:
Year: 2015 PMID: 25712913 DOI: 10.1016/j.ijpsycho.2015.02.023
Source DB: PubMed Journal: Int J Psychophysiol ISSN: 0167-8760 Impact factor: 2.997