4.7 Article

AGGREGATION OF SPARSE LINEAR DISCRIMINANT ANALYSES FOR EVENT-RELATED POTENTIAL CLASSIFICATION IN BRAIN-COMPUTER INTERFACE

Journal

INTERNATIONAL JOURNAL OF NEURAL SYSTEMS
Volume 24, Issue 1, Pages -

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0129065714500038

Keywords

Aggregation; brain-computer interface (BCI); electroencephalogram (EEG); event-related potential (ERP); sparse linear discriminant analysis

Funding

  1. Nation Nature Science Foundation of China [61305028, 61074113, 61203127, 61103122, 61202155]
  2. Fundamental Research Funds for the Central Universities [WH1314023, WH1114038]
  3. Shanghai Leading Academic Discipline Project [B504]
  4. JSPS KAKENHI Grant [24700154]
  5. Grants-in-Aid for Scientific Research [24700154] Funding Source: KAKEN

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Two main issues for event-related potential (ERP) classification in brain-computer interface (BCI) application are curse-of-dimensionality and bias-variance tradeoff, which may deteriorate classification performance, especially with insufficient training samples resulted from limited calibration time. This study introduces an aggregation of sparse linear discriminant analyses (ASLDA) to overcome these problems. In the ASLDA, multiple sparse discriminant vectors are learned from differently l(1)-regularized least-squares regressions by exploiting the equivalence between LDA and least-squares regression, and are subsequently aggregated to form an ensemble classifier, which could not only implement automatic feature selection for dimensionality reduction to alleviate curse-of-dimensionality, but also decrease the variance to improve generalization capacity for new test samples. Extensive investigation and comparison are carried out among the ASLDA, the ordinary LDA and other competing ERP classification algorithms, based on different three ERP datasets. Experimental results indicate that the ASLDA yields better overall performance for single-trial ERP classification when insufficient training samples are available. This suggests the proposed ASLDA is promising for ERP classification in small sample size scenario to improve the practicability of BCI.

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