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Cluster decomposing and multi-objective optimization based-ensemble learning framework for motor imagery-based brain–computer interfaces

Cili Zuo, Jing Jin, Ren Xu, Lianghong Wu, Chang Liu, Yangyang Miao, Xingyu Wang

2021Journal of Neural Engineering24 citationsDOI

Abstract

Abstract Objective . Motor imagery (MI) is a mental representation of motor behavior and a widely used pattern in electroencephalogram (EEG) based brain–computer interface (BCI) systems. EEG is known for its non-stationary, non-linear features and sensitivity to artifacts from various sources. This study aimed to design a powerful classifier with a strong generalization capability for MI based BCIs. Approach . In this study, we proposed a cluster decomposing based ensemble learning framework (CDECL) for EEG classification of MI based BCIs. The EEG data was decomposed into sub-data sets with different distributions by clustering decomposition. Then a set of heterogeneous classifiers was trained on each sub-data set for generating a diversified classifier search space. To obtain the optimal classifier combination, the ensemble learning was formulated as a multi-objective optimization problem and a stochastic fractal based binary multi-objective fruit fly optimization algorithm was proposed for solving the ensemble learning problem. Main results. The proposed method was validated on two public EEG datasets (BCI Competition IV datasets IIb and BCI Competition IV dataset IIa) and compared with several other competing classification methods. Experimental results showed that the proposed CDECL based methods can effectively construct a diversity ensemble classifier and exhibits superior classification performance in comparison with several competing methods. Significance . The proposed method is promising for improving the performance of MI-based BCIs.

Topics & Concepts

Brain–computer interfaceMotor imageryComputer scienceArtificial intelligenceClassifier (UML)Cluster analysisPattern recognition (psychology)ElectroencephalographyEnsemble learningMachine learningBinary classificationLinear classifierSupport vector machinePsychiatryPsychologyEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingBlind Source Separation Techniques