array(2) { ["lab"]=> string(4) "1409" ["publication"]=> string(5) "12650" } Sparse Logistic Regression With L1/2 Penalty for Emotion Recognition in Electroencephalography Classification - Liang Yong | LabXing

Sparse Logistic Regression With L1/2 Penalty for Emotion Recognition in Electroencephalography Classification

2020
期刊 Frontiers in neuroinformatics
Emotion recognition based on electroencephalography (EEG) signals is a current focus in brain-computer interface research. However, the classification of EEG is difficult owing to the large amounts of data and high levels of noise. Therefore, it is important to determine how to effectively extract features that include important information. Regularization, one of the effective methods for EEG signal processing, can effectively extract important features from the signal and has potential applications in EEG emotion recognition. Currently, the most popular regularization technique is Lasso (L_1) and L2. In recent years, researchers have proposed many other regularization terms. In theory, Lq-type regularization has a lower value, which means that it can be used to find solutions with better sparsity. L1/2 regularization is of L_q type (0 < q < 1) and has been shown to have many attractive properties. In this work, we studied the L_1/2 penalty in sparse logistic regression for three-classification EEG emotion recognition, and used a coordinate descent algorithm and a univariate semi-threshold operator to implement L1/2 penalty logistic regression. The experimental results on simulation and real data demonstrate that our proposed method is better than other existing regularization methods. Sparse logistic regression with L1/2 penalty achieves higher classification accuracy than the conventional L1, L2, and elastic network regularization methods, using fewer but more informative EEG signals. This is very important for high-dimensional small-sample EEG data, and can help researchers to reduce computational complexity and improve computational …

  • 卷 14
  • 期 29
  • Frontiers