Statistical Representation of Emotions for Puzzle Workload using Electroencephalogram and Heart Rate Variability

T. Igasaki, Aoi Takahi, Saori Nishikawa
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Abstract

We attempted to express the psychological quantity of executing workload through statistical analysis of indices extracted from an electroencephalogram (EEG) and a heart rate variability (HRV) score of subjects when they were asked to solve jigsaw puzzles. First, we conducted a regression analysis of the emotional score of the mood evaluation questionnaire after the completion of the workload and the indices of the EEG and HRV before and after the start and completion of the workload, and thereafter confirmed the strongest correlation before the completion of the workload. Next, we conducted a principal component analysis of the indices of the EEG and HRV before the completion of the workload, and thereafter confirmed that three principal components were obtained that correlated with “friendship,” “fatigue-inertia,” and “vigor-activity” in the mood evaluation questionnaire. Therefore, we demonstrated that the physiological quantities of the EEG and HRV indices could statistically express the psychological quantities of positive/negative emotions, even with small data.
利用脑电图和心率变异性对智力游戏工作负荷情绪的统计表征
我们试图通过统计分析从被试者的脑电图(EEG)和心率变异性(HRV)得分中提取的指标来表达执行工作量的心理量。首先,我们对工作负荷完成后的情绪评价问卷的情绪得分与工作负荷开始和完成前后的EEG和HRV指标进行回归分析,确认工作负荷完成前的相关性最强。接下来,我们对工作量完成前的EEG和HRV指标进行主成分分析,确认得到与情绪评价问卷中的“友谊”、“疲劳-惯性”和“活力-活动”相关的三个主成分。因此,我们证明了EEG和HRV指标的生理量可以统计地表达积极/消极情绪的心理量,即使数据很少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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