首页> 外文期刊>International Journal of Neural Systems >BENEFITS OF MULTI-DOMAIN FEATURE OF MISMATCH NEGATIVITY EXTRACTED BY NON-NEGATIVE TENSOR FACTORIZATION FROM EEG COLLECTED BY LOW-DENSITY ARRAY
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BENEFITS OF MULTI-DOMAIN FEATURE OF MISMATCH NEGATIVITY EXTRACTED BY NON-NEGATIVE TENSOR FACTORIZATION FROM EEG COLLECTED BY LOW-DENSITY ARRAY

机译:从低密度阵列收集的脑电信号的非负张量因子分解中提取失配负性的多域特征

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摘要

Through exploiting temporal, spectral, time-frequency representations, and spatial properties of mismatch negativity (MMN) simultaneously, this study extracts a multi-domain feature of MMN mainly using non-negative tensor factorization. In our experiment, the peak amplitude of MMN between children with reading disability and children with attention deficit was not significantly different, whereas the new feature of MMN significantly discriminated the two groups of children. This is because the feature was derived from multi-domain information with significant reduction of the heterogeneous effect of datasets.
机译:通过同时利用时间,频谱,时频表示和失配负性(MMN)的空间特性,本研究主要使用非负张量分解来提取MMN的多域特征。在我们的实验中,阅读障碍儿童和注意力缺陷儿童之间MMN的峰值幅度没有显着差异,而MMN的新特征则明显区分了两组儿童。这是因为该特征是从多域信息派生而来,大大降低了数据集的异构影响。

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