Universitat Politècnica de Catalunya (BarcelonaTech), 08034 Barcelona, Spain.
Eurecat, Centre Tecnològic de Catalunya, 08005 Barcelona, Spain.
Int J Neural Syst. 2022 Dec;32(12):2250049. doi: 10.1142/S0129065722500496. Epub 2022 Sep 21.
Researchers have shown the limitations of using the single-modal data stream for emotion classification. Multi-modal data streams are therefore deemed necessary to improve the accuracy and performance of online emotion classifiers. An online decision ensemble is a widely used approach to classify emotions in real-time using multi-modal data streams. There is a plethora of online ensemble approaches; these approaches use a fixed parameter ([Formula: see text]) to adjust the weights of each classifier (called penalty) in case of wrong classification and no reward for a good performing classifier. Also, the performance of the ensemble depends on the [Formula: see text], which is set using trial and error. This paper presents a new Reward-Penalty-based Weighted Ensemble (RPWE) for real-time multi-modal emotion classification using multi-modal physiological data streams. The proposed RPWE is thoroughly tested using two prevalent benchmark data sets, DEAP and AMIGOS. The first experiment confirms the impact of the base stream classifier with RPWE for emotion classification in real-time. The RPWE is compared with different popular and widely used online ensemble approaches using multi-modal data streams in the second experiment. The average balanced accuracy, F1-score results showed the usefulness and robustness of RPWE in emotion classification in real-time from the multi-modal data stream.
研究人员已经展示了使用单一模态数据流进行情感分类的局限性。因此,多模态数据流被认为是提高在线情感分类器准确性和性能的必要条件。在线决策集成是一种广泛用于使用多模态数据流实时分类情感的方法。有很多在线集成方法;这些方法使用固定参数 ([Formula: see text]) 来调整每个分类器的权重(称为惩罚),以应对错误分类,并且对表现良好的分类器没有奖励。此外,集成的性能取决于 [Formula: see text],它是通过反复试验来设置的。本文提出了一种新的基于奖励-惩罚的加权集成 (RPWE),用于使用多模态生理数据流进行实时多模态情感分类。所提出的 RPWE 使用两个流行的基准数据集 DEAP 和 AMIGOS 进行了全面测试。第一个实验证实了 RPWE 对实时情感分类中基础流分类器的影响。第二个实验使用多模态数据流比较了 RPWE 与不同流行和广泛使用的在线集成方法。平均平衡准确性、F1 分数结果表明,RPWE 在实时从多模态数据流进行情感分类中的有用性和鲁棒性。