Multivariate EEG Analysis Reveals Neural Correlates for the Differential Perception of Chord Progressions

IF 0.6 0 MUSIC
I. Sturm, B. Blankertz, G. Curio
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引用次数: 3

Abstract

Exploring a listener’s mental representation of tonal hierarchy typically uses several classes of tones or chords embedded in a musical context. Owing to this complexity, a gap exists between behavioral methods, such as the probe tone technique, and physiological studies using electroencephalography (EEG) that commonly require averaging over many stimulus presentations and thus are typically limited in the number of experimental conditions. Here, we propose a novel method for multivariate classification-based EEG feature extraction enhancing EEG multiclass differentiation in the domain of music perception. In a show-case application, we (a) investigate how 13 listeners rate the perceived harmonic distance of 11 classes of chord changes in a continuous stimulus train of major triad chords, (b) apply the proposed method to aggregate typical change-related components of event-related potentials into a compact 11-valued neural profile, and (c) compare both with various change representations derived from music theory. Although the behavioral profiles varied interindividually, showing influences of tonal categories and/or pitch distance, the event-related potential-based neural profiles revealed a dominant influence of pitch distance in 8/13 participants. Thus, a task-driven behavioral rating (reflecting tonal categories) indicates that pitch-based neural representations can be overridden in some participants, whereas in others they could dominate and lead to task-deviant (pitch-based) ratings. In summary, we demonstrate that multivariate analysis methods can extend the scope of music perception-related EEG studies with respect to the number of stimulus conditions at the single-participant level complementing established behavioral methods.
多变量脑电图分析揭示和弦进行差异感知的神经关联
探索听者对音调层次的心理表征通常使用嵌入音乐背景中的几种音调或和弦。由于这种复杂性,行为方法(如探针音调技术)和使用脑电图(EEG)的生理研究之间存在差距,后者通常需要对许多刺激表现进行平均,因此通常在实验条件的数量上受到限制。本文提出了一种新的基于多元分类的脑电特征提取方法,增强了音乐感知领域的脑电多类分化。在一个示范应用中,我们(a)研究了13名听众如何在连续的大三和弦刺激训练中对11类和弦变化的感知和声距离进行评级,(b)应用所提出的方法将事件相关电位的典型变化相关成分聚合到一个紧凑的11值神经剖面中,(c)将两者与来自音乐理论的各种变化表征进行比较。尽管行为特征在个体间存在差异,表现出音调类别和/或音高距离的影响,但基于事件相关电位的神经特征显示,8/13的参与者中,音高距离的影响占主导地位。因此,任务驱动的行为评级(反映音调类别)表明,在一些参与者中,基于音调的神经表征可以被覆盖,而在另一些参与者中,它们可能占主导地位,并导致任务偏差(基于音调的)评级。综上所述,我们证明了多元分析方法可以扩展音乐感知相关脑电图研究的范围,在单参与者水平上增加刺激条件的数量,补充现有的行为方法。
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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来源期刊
Psychomusicology
Psychomusicology Multiple-
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