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Boosting Factor-Specific Functional Historical Models for the Detection of Synchronisation in Bioelectrical Signals

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The link between different psychophysiological measures during emotion episodes is not well understood. To analyse the functional relationship between electroencephalography (EEG) and facial electromyography (EMG), we apply historical function-on-function regression models to EEG and EMG data that were simultaneously recorded from 24 participants while they were playing a computerised gambling task. Given the complexity of the data structure for this application, we extend simple functional historical models to models including random historical effects, factor-specific historical effects, and factor-specific random historical effects. Estimation is conducted by a component-wise gradient boosting algorithm, which scales well to large data sets and complex models.

David R\"ugamer, Sarah Brockhaus, Kornelia Gentsch, Klaus Scherer, Sonja Greven• 2016

Related benchmarks

TaskDatasetResultRank
Joint moment predictionFukuchi and Liew datasets (test)
Relative RMSE30
5
EMG prediction from EEG signalsEEG-EMG dataset (10 train/test-splits)
Relative RMSE0.195
4
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