Probabilistic Models for Common Spatial Patterns: Parameter-Expanded EM and Variational Bayes

Authors

  • Hyohyeong Kang Pohang University of Science and Technology
  • Seungjin Choi Pohang University of Science and Technology

DOI:

https://doi.org/10.1609/aaai.v26i1.8277

Keywords:

Bayesian Learning, Multi-task Learning, Transfer Learning, Brain Computer Interface

Abstract

Common spatial patterns (CSP) is a popular feature extraction method for discriminating between positive andnegative classes in electroencephalography (EEG) data.Two probabilistic models for CSP were recently developed: probabilistic CSP (PCSP), which is trained by expectation maximization (EM), and variational BayesianCSP (VBCSP) which is learned by variational approx-imation. Parameter expansion methods use auxiliaryparameters to speed up the convergence of EM or thedeterministic approximation of the target distributionin variational inference. In this paper, we describethe development of parameter-expanded algorithms forPCSP and VBCSP, leading to PCSP-PX and VBCSP-PX, whose convergence speed-up and high performanceare emphasized. The convergence speed-up in PCSP-PX and VBCSP-PX is a direct consequence of parame-ter expansion methods. The contribution of this study is the performance improvement in the case of CSP,which is a novel development. Numerical experimentson the BCI competition datasets, III IV a and IV 2ademonstrate the high performance and fast convergenceof PCSP-PX and VBCSP-PX, as compared to PCSP andVBCSP.

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Published

2021-09-20

How to Cite

Kang, H., & Choi, S. (2021). Probabilistic Models for Common Spatial Patterns: Parameter-Expanded EM and Variational Bayes. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 970-976. https://doi.org/10.1609/aaai.v26i1.8277

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Section

AAAI Technical Track: Machine Learning