Modeling time warping in tensor decomposition

B. Rivet, Jeremy E. Cohen
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引用次数: 4

Abstract

Taking into account subject variability in data mining is one of the great challenges of modern biomedical engineering. In EEG recordings, the assumption that time sources are exactly shared by multiple subjects, multiple recordings of the same subject, or even multiples instances of the sources in one recording is especially wrong. In this paper, we propose to deal with shared underlying sources expressed through time warping in multiple EEG recordings, in the context of ocular artifact removal. Diffeomorphisms are used to model the time warping operators. We derive an algorithm that extracts all sources and diffeomorphism in the model and show successful simulations, giving a proof of concept that subject variability can be tackled with tensor modeling.
张量分解中的时间翘曲建模
在数据挖掘中考虑受试者的可变性是现代生物医学工程面临的巨大挑战之一。在脑电图记录中,认为时间源被多个受试者、同一受试者的多个记录、甚至一个记录中的多个源实例完全共享的假设是特别错误的。在本文中,我们提出在去除眼部伪影的背景下,处理多个EEG记录中通过时间扭曲表达的共享底层源。差分同态用于时间规整算子的建模。我们推导了一种算法来提取模型中的所有源和微分同构,并展示了成功的仿真,证明了主体可变性可以用张量建模来解决的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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