Emotion Classification through EEG signals has achieved many advancements. However, the problems like lack of data and learning the important features and patterns have always been areas with scope for improvement both computationally and in prediction accuracy. This works analyses the baseline machine learning classifiers' performance on DEAP Dataset along with a tabular learning approach that provided state-of-the-art comparable results leveraging the performance boost due to its deep learning architecture without deploying heavy neural networks.
翻译:通过EEG信号进行情感分类取得了许多进展,然而,缺乏数据和学习重要特征和模式等问题一直是在计算和预测准确性方面都有改进余地的领域,这项工作分析了基线机器学习分类员在DEAP数据集上的绩效,同时采用表格式学习方法,提供最先进的可比成果,在不部署重型神经网络的情况下利用其深厚的学习结构,利用业绩提升。