Yuan Guangjie, He Wenguang, Liu Guangyuan
College of Electronic and Information Engineering, Southwest University, Chongqing, China.
Institute of Affective Computing and Information Processing, Southwest University, Chongqing, China.
Front Neurosci. 2022 Feb 11;16:830820. doi: 10.3389/fnins.2022.830820. eCollection 2022.
Initial romantic attraction (IRA) refers to a series of positive reactions toward potential ideal partners based on individual preferences; its evolutionary value lies in facilitating mate selection. Although the EEG activities associated with IRA have been preliminarily understood; however, it remains unclear whether IRA can be recognized based on EEG activity. To clarify this, we simulated a dating platform similar to Tinder. Participants were asked to imagine that they were using the simulated dating platform to choose the ideal potential partner. Their brain electrical signals were recorded as they viewed photos of each potential partner and simultaneously assessed their initial romantic attraction in that potential partner through self-reported scale responses. Thereafter, the preprocessed EEG signals were decomposed into power-related features of different frequency bands using a wavelet transform approach. In addition to the power spectral features, feature extraction also accounted for the physiological parameters related to hemispheric asymmetries. Classification was performed by employing a random forest classifier, and the signals were divided into two categories: IRA engendered and IRA un-engendered. Based on the results of the 10-fold cross-validation, the best classification accuracy 85.2% (SD = 0.02) was achieved using feature vectors, mainly including the asymmetry features in alpha (8-13 Hz), beta (13-30 Hz), and theta (4-8 Hz) rhythms. The results of this study provide early evidence for EEG-based mate preference recognition and pave the way for the development of EEG-based romantic-matching systems.
初始浪漫吸引力(IRA)是指基于个人偏好对潜在理想伴侣产生的一系列积极反应;其进化价值在于促进配偶选择。尽管与IRA相关的脑电图活动已得到初步了解;然而,基于脑电图活动是否能够识别IRA仍不清楚。为了阐明这一点,我们模拟了一个类似于Tinder的约会平台。参与者被要求想象他们正在使用这个模拟约会平台来选择理想的潜在伴侣。在他们查看每个潜在伴侣的照片时记录其脑电信号,并通过自我报告量表反应同时评估他们对该潜在伴侣的初始浪漫吸引力。此后,使用小波变换方法将预处理后的脑电信号分解为不同频段的功率相关特征。除了功率谱特征外,特征提取还考虑了与半球不对称相关的生理参数。采用随机森林分类器进行分类,信号分为两类:产生IRA和未产生IRA。基于10折交叉验证的结果,使用主要包括阿尔法(8 - 13赫兹)、贝塔(13 - 30赫兹)和西塔(4 - 8赫兹)节律中的不对称特征的特征向量,实现了最佳分类准确率85.2%(标准差 = 0.02)。本研究结果为基于脑电图的配偶偏好识别提供了早期证据,并为基于脑电图的浪漫匹配系统的发展铺平了道路。