跨任务类型的基于脑电图的心理工作量分类中的机器学习性能:系统回顾。

IF 1.9 Q3 ERGONOMICS
Frontiers in neuroergonomics Pub Date : 2025-09-15 eCollection Date: 2025-01-01 DOI:10.3389/fnrgo.2025.1621309
Miloš Pušica, Bogdan Mijović, Maria Chiara Leva, Ivan Gligorijević
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引用次数: 0

摘要

文献以各种任务和方法为特征来诱导心理工作量(MWL)并评估MWL估计模型的性能。由于不存在标准化的基准任务或任务集,因此很难对该领域的不同机器学习(ML)解决方案进行比较,因为它们的性能在很大程度上取决于这些因素。在本文中,我们首次全面考察了机器学习模型在跨任务类型的基于脑电图的MWL分类中的性能。为了实现这一点,我们根据实验中使用的任务类型对ML研究进行了分类,并比较了这些类别中模型的性能。值得注意的是,与单任务研究和主观评价MWL的研究相比,在基于定量任务负荷评价MWL的多任务研究中,表现最好的模型的MWL分类准确率显著下降。这指出了在更复杂的任务(如多任务处理)中估计MWL的固有挑战。这与实际应用程序特别相关,因为现实世界的任务通常涉及某种程度的多任务处理。通过比较不同任务类型的机器学习模型的性能,本综述为基于脑电图的MWL估计的最新进展提供了有价值的见解,突出了该领域现有的差距,并指出了有待进一步研究的开放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning performance in EEG-based mental workload classification across task types: a systematic review.

The literature features a variety of tasks and methodologies to induce mental workload (MWL) and to assess the performance of MWL estimation models. Because no standardized benchmark task or set of tasks exists, the comparison of different machine learning (ML) solutions in this field is difficult, as their performance is significantly dependent on these factors. In this paper, we present the first comprehensive examination of ML models' performance in EEG-based MWL classification across task types. To achieve this, we categorized ML studies based on the task type used in their experiments and compared models' performances across these categories. Notably, a significant drop in MWL classification accuracy was observed among the best-performing models in multitasking studies where MWL was rated based on quantitative task load, compared to those in single-tasking studies and studies where MWL was subjectively rated. This points to the inherent challenges associated with estimating MWL in more complex tasks such as multitasking. This is particularly relevant for practical applications, as real-world tasks typically involve some degree of multitasking. By comparing ML models' performances across task types, this review provides valuable insights into the state-of-the-art of EEG-based MWL estimation, highlights existing gaps in the field, and points to open questions for further research.

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