Music preference was reported as a factor, which could elicit innermost music emotion, entailing accurate ground-truth data and music therapy efficiency. This study executes statistical analysis to investigate the distinction of music preference through familiarity scores, response times (response rates), and brain response (EEG). Twenty participants did self-assessment after listening to two types of popular music's chorus section: music without lyrics (Melody) and music with lyrics (Song). We then conduct a music preference classification using a support vector machine (SVM) with the familiarity scores, the response rates, and EEG as the feature vectors. The statistical analysis and SVM's F1-score of EEG are congruent, which is the brain's right side outperformed its left side in classification performance. Finally, these behavioral and brain studies support that preference, familiarity, and response rates can contribute to the music emotion experiment's design to understand music, emotion, and listener. Not only to the music industry, the biomedical, and healthcare industry can also exploit this experiment to collect data from patients to improve the efficiency of healing by music.
翻译:据报告,音乐偏好是一个可以引起最深层的音乐情感的因素,这需要准确的地面真实数据和音乐治疗效率。本研究通过熟悉评分、响应时间(响应率)和大脑反应(EEG)进行统计分析,调查音乐偏好的差异。20名参与者在聆听了两种流行音乐合唱部分:没有歌词的音乐(Melody)和歌词(Song)的音乐(Song)之后进行了自我评估。然后,我们使用一种支持矢量机(SVM)进行音乐偏好分类,该机与熟悉得分、响应率和作为特效矢量的 EEEG相匹配。统计分析和SVM的EEG F1核心是一致的,这是大脑右侧在分类表现中表现优于左侧。最后,这些行为和大脑研究支持了偏好、熟悉和反应率有助于音乐情感实验的设计,以了解音乐、情感和听众。不仅对音乐产业、生物医学和保健行业来说,还可以利用这一实验从病人那里收集数据,以提高音乐治疗的效率。