Volume 33, Issue. 1, February, 2017


Pairwise Classifi er Ensemble with Adaptive Sub-Classifi ers for fMRI Pattern Analysis

 Eunwoo Kim, HyunWook Park  


Korea Advanced Institute of Science and Technology (KAIST), Daejeon, South Korea

Abstract 

The multi-voxel pattern analysis technique is applied to fMRI data for classification of high-level brain functions using pattern information distributed over multiple voxels. In this paper, we propose a classifier ensemble for multiclass classification in fMRI analysis, exploiting the fact that specific neighboring voxels can contain spatial pattern information. The proposed method converts the multiclass classification to a pairwise classifier ensemble, and each pairwise classifier consists of multiple sub-classifiers using an adaptive feature set for each class-pair. Simulated and real fMRI data were used to verify the proposed method. Intra- and inter-subject analyses were performed to compare the proposed method with several well-known classifiers, including single and ensemble classifiers. The comparison results showed that the proposed method can be generally applied to multiclass classification in both simulations and real fMRI analyses.

Keywords

Ensemble learning, Functional MRI, Multi-voxel pattern analysis, Pairwise classifier

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