基于集成迁移学习的主体自适应脑状态解码模型

Fulin Wei, Tianyuan Jia, Ziyu Li, Zhaodi Pei, Xia Wu
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引用次数: 0

摘要

脑状态解码模型的跨学科变异性给其实际应用带来了很大的挑战。虽然已有许多迁移学习方法用于解决这一问题,但大多数迁移学习方法直接将现有学科合并到混合源域,忽略了多个现有学科之间的差异。目标主体的数据很难与混合源域对齐。因此,我们的目标是减少不同学科之间的跨学科差异,充分利用它们丰富的信息。提出了一种基于迁移连接匹配的集成迁移学习(ETL)方法,以集成方式构建主体自适应解码模型。ETL可以减少成对受试者之间的差异,也可以减少多个现有受试者之间的差异。我们发现,与一对一方案相比,多对一方案可以使用来自多个现有受试者的更多数据来提高性能,而一对一方案的标准差要小得多。对比方法和消融实验结果验证了ETL方法解码脑状态的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Subject-Adaptive Brain State Decoding Model via Ensemble Transfer Learning
The cross-subject variability poses a great challenge to the practical application of the brain state decoding model. Although many transfer learning methods have been used to solve this problem, most of them directly combine existing subjects into a mixed source domain, ignoring the differences among multiple existing subjects. It's hard to align the target subject's data with the mixed source domain. Thus, we aim to reduce the cross-subject variability among different subjects and make full use of the rich information from them. We propose an ensemble transfer learning (ETL) method based on transfer joint matching to construct a subject-adaptive decoding model in an ensemble fashion. ETL can reduce the differences between the pairs of subjects, as well as the differences among multiple existing subjects. We found that many-to-one scheme could improve the performance with more data from multiple existing subjects, compared with one-to-one scheme, while the standard deviations of one-to-one schemes were much smaller. Moreover, the results of comparison methods and ablation experiments proved the effectiveness of our ETL method to decode brain state.
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