Unsupervised Clustering of Individuals Sharing Selective Attentional Focus Using Physiological Synchrony

I. Stuldreher, Alexandre Merasli, Nattapong Thammasan, J. V. van Erp, A. Brouwer
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引用次数: 3

Abstract

Research on brain signals as indicators of a certain attentional state is moving from laboratory environments to everyday settings. Uncovering the attentional focus of individuals in such settings is challenging because there is usually limited information about real-world events, as well as a lack of data from the real-world context at hand that is correctly labeled with respect to individuals' attentional state. In most approaches, such data is needed to train attention monitoring models. We here investigate whether unsupervised clustering can be combined with physiological synchrony in the electroencephalogram (EEG), electrodermal activity (EDA), and heart rate to automatically identify groups of individuals sharing attentional focus without using knowledge of the sensory stimuli or attentional focus of any of the individuals. We used data from an experiment in which 26 participants listened to an audiobook interspersed with emotional sounds and beeps. Thirteen participants were instructed to focus on the narrative of the audiobook and 13 participants were instructed to focus on the interspersed emotional sounds and beeps. We used a broad range of commonly applied dimensionality reduction ordination techniques—further referred to as mappings—in combination with unsupervised clustering algorithms to identify the two groups of individuals sharing attentional focus based on physiological synchrony. Analyses were performed using the three modalities EEG, EDA, and heart rate separately, and using all possible combinations of these modalities. The best unimodal results were obtained when applying clustering algorithms on physiological synchrony data in EEG, yielding a maximum clustering accuracy of 85%. Even though the use of EDA or heart rate by itself did not lead to accuracies significantly higher than chance level, combining EEG with these measures in a multimodal approach generally resulted in higher classification accuracies than when using only EEG. Additionally, classification results of multimodal data were found to be more consistent across algorithms than unimodal data, making algorithm choice less important. Our finding that unsupervised classification into attentional groups is possible is important to support studies on attentional engagement in everyday settings.
利用生理同步性共享选择性注意焦点的个体无监督聚类
将大脑信号作为某种注意力状态指示器的研究正从实验室环境转向日常环境。在这样的环境中揭示个人的注意力焦点是具有挑战性的,因为关于现实世界事件的信息通常是有限的,而且缺乏来自现实世界背景的数据,这些数据可以正确地标记个人的注意力状态。在大多数方法中,需要这些数据来训练注意力监测模型。我们在此研究无监督聚类是否可以与脑电图(EEG)、皮电活动(EDA)和心率的生理同步性相结合,在不使用任何个体的感觉刺激或注意焦点的情况下自动识别共享注意焦点的个体群体。我们使用了一项实验的数据,在这项实验中,26名参与者听了一本夹杂着情绪声音和哔哔声的有声读物。13名参与者被要求专注于有声书的叙述,另外13名参与者被要求专注于穿插的情绪声音和哔哔声。我们使用了广泛的常用降维排序技术-进一步称为映射-结合无监督聚类算法来识别基于生理同步性的两组共享注意焦点的个体。分别使用EEG、EDA和心率三种模式进行分析,并使用这些模式的所有可能组合。将聚类算法应用于脑电生理同步数据时,获得了最佳的单峰结果,聚类准确率最高可达85%。尽管单独使用EDA或心率并不会导致准确率显著高于机会水平,但在多模态方法中将EEG与这些指标结合使用通常会比仅使用EEG时产生更高的分类准确率。此外,多模态数据的分类结果在不同算法之间比单模态数据更加一致,使得算法选择不那么重要。我们的发现,无监督的注意力组分类是可能的,这对于支持日常环境中注意力投入的研究很重要。
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