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Cross-Participant EEG-Based Assessment of Cognitive Workload Using Multi-Path Convolutional Recurrent Neural Networks

机译:基于跨参与者脑电图的认知工作量评估使用多路径卷积递归神经网络

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摘要

Applying deep learning methods to electroencephalograph (EEG) data for cognitive state assessment has yielded improvements over previous modeling methods. However, research focused on cross-participant cognitive workload modeling using these techniques is underrepresented. We study the problem of cross-participant state estimation in a non-stimulus-locked task environment, where a trained model is used to make workload estimates on a new participant who is not represented in the training set. Using experimental data from the Multi-Attribute Task Battery (MATB) environment, a variety of deep neural network models are evaluated in the trade-space of computational efficiency, model accuracy, variance and temporal specificity yielding three important contributions: (1) The performance of ensembles of individually-trained models is statistically indistinguishable from group-trained methods at most sequence lengths. These ensembles can be trained for a fraction of the computational cost compared to group-trained methods and enable simpler model updates. (2) While increasing temporal sequence length improves mean accuracy, it is not sufficient to overcome distributional dissimilarities between individuals’ EEG data, as it results in statistically significant increases in cross-participant variance. (3) Compared to all other networks evaluated, a novel convolutional-recurrent model using multi-path subnetworks and bi-directional, residual recurrent layers resulted in statistically significant increases in predictive accuracy and decreases in cross-participant variance.
机译:将深度学习方法应用于脑电图(EEG)数据以进行认知状态评估,已经比以前的建模方法有所改进。但是,针对使用这些技术进行跨参与者认知工作量建模的研究不足。我们研究了非激励锁定任务环境中的跨参与者状态估计问题,在该环境中,使用训练模型对未包含在训练集中的新参与者进行工作负荷估计。使用来自多属性任务电池(MATB)环境的实验数据,在计算效率,模型准确性,方差和时间特异性的交易空间中评估了各种深度神经网络模型,这些模型产生了三个重要贡献:(1)性能在大多数序列长度上,单独训练的模型的合计与小组训练的方法在统计上是无法区分的。与组训练方法相比,可以训练这些合奏,而计算成本仅为其一小部分,并且可以简化模型更新。 (2)虽然增加时间序列长度可以提高平均准确度,但不足以克服个体脑电数据之间的分布差异,因为这会导致跨参与者方差的统计显着增加。 (3)与评估的所有其他网络相比,使用多径子网络和双向,残余递归层的新型卷积递归模型导致预测准确性的统计显着提高和跨参与者方差的减少。

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