Sequential nonnegative tucker decomposition on multi-way array of time-frequency transformed event-related potentials

MLSP(2012)

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摘要
Tensor factorization has exciting advantages to analyze EEG for simultaneously exploiting its information in the time, frequency and spatial domains as well as for sufficiently visualizing data in different domains concurrently. Event-related potentials (ERPs) are usually investigated by the group-level analysis, for which tensor factorization can be used. However, sizes of a tensor including time-frequency representation of ERPs of multiple channels of multiple participants can be immense. It is time-consuming to decompose such a tensor. The low-rank approximation based sequential nonnegative Tucker decomposition (LraSNTD) has been recently developed and shown to be computationally efficient with respect to some benchmark datasets. Here, LraSNTD is applied to decompose a fourth-order tensor representation of ERPs. We find that the decomposed results from LraSNTD and a benchmark nonnegative Tucker decomposition algorithm are very similar. So, LraSNTD is promising for ERP studies.
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关键词
signal representation,event-related potential,tensor factorization,tensor,low rank approximation,approximation theory,erp,fourth-order tensor representation decomposition,electroencephalography,spatial domains,medical signal processing,eeg analysis,sequential nonnegative tucker decomposition,low-rank approximation based sequential nonnegative tucker decomposition,sequential nonnegative tucker decomposition algorithm,time-frequency representation,matrix decomposition,time-frequency transformed event-related potentials,lrasntd,multiway array,group-level analysis,tensors,time-frequency analysis,event related potential,time frequency analysis,time frequency representation
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