AI Article Synopsis

  • Previous studies on emotion recognition using EEG data have shown effectiveness with Echo State Networks (ESNs), but they often involve complex training methods and computational challenges due to the use of intrinsic and synaptic plasticity.
  • Recent neuroscience insights indicate that the brain's modular structure enhances information processing, prompting the development of a Modular Echo State Network (M-ESN) that incorporates this efficient modularity into its design.
  • The M-ESN, tested on the DEAP dataset, demonstrates superior performance over traditional ESNs, achieving higher classification accuracy across various emotional tasks, while utilizing a smaller reservoir and simplified training procedures.

Article Abstract

Previous studies have successfully applied a lightweight recurrent neural network (RNN) called Echo State Network (ESN) for EEG-based emotion recognition. These studies use intrinsic plasticity (IP) and synaptic plasticity (SP) to tune the hidden reservoir layer of ESN, yet they require extra training procedures and are often computationally complex. Recent neuroscientific research reveals that the brain is modular, consisting of internally dense and externally sparse subnetworks. Furthermore, it has been proved that this modular topology facilitates information processing efficiency in both biological and artificial neural networks (ANNs). Motivated by these findings, we propose Modular Echo State Network (M-ESN), where the hidden layer of ESN is directly initialized to a more efficient modular structure. In this paper, we first describe our novel implementation method, which enables us to find the optimal module numbers, local and global connectivity. Then, the M-ESN is benchmarked on the DEAP dataset. Lastly, we explain why network modularity improves model performance. We demonstrate that modular organization leads to a more diverse distribution of node degrees, which increases network heterogeneity and subsequently improves classification accuracy. On the emotion arousal, valence, and stress/calm classification tasks, our M-ESN outperforms regular ESN by 5.44, 5.90, and 5.42%, respectively, while this difference when comparing with adaptation rules tuned ESNs are 0.77, 5.49, and 0.95%. Notably, our results are obtained using M-ESN with a much smaller reservoir size and simpler training process.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10940514PMC
http://dx.doi.org/10.3389/fnins.2024.1305284DOI Listing

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