A Semi-Supervised Learning Algorithm for Brain-Computer Interface Based on Combining Features

Natural Computation, 2008. ICNC '08. Fourth International Conference(2008)

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摘要
A brain-computer interface (BCI) is a communication system that doesnpsilat depend on brain's normal output pathways of peripheral nerves and muscles. In this paper, a semi-supervised learning algorithm for BCI based on features combining is proposed aiming at reducing the training process. In order to obtain more stable and effective classification information, two kinds of features are extracted by supervised and unsupervised extractions respectively and two corresponding classifiers are trained. During the learning process of the final classifier, the initial labeled set is enlarged iteratively by unlabeled data (with their predicted labels) whose two labels predicted by both classifiers are same, freeing of setting the threshold of confidence. The features supervised-extracted and both classifiers are updated each iteration for the purpose of absorbing unlabeled data information. At last, the applying on data set I of BCI Competition 2005 demonstrates the validity of our proposed algorithm.
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关键词
unlabeled data information,combining features,bci competition,training process,learning (artificial intelligence),initial labeled set,brain-computer interfaces,pattern classification,unlabeled data,event-relative desynchronization,frequency power feature,features combining,hilbert-huang transformation,proposed algorithm,common spatial patterns,classification information,data handling,communication system,brain-computer interface,corresponding classifier,semi-supervised learning algorithm,effective classification information,semisupervised learning algorithm,algorithm design and analysis,semi supervised learning,classification algorithms,accuracy,brain computer interface,hilbert huang transform,feature extraction,data mining,learning artificial intelligence,brain computer interfaces,common spatial pattern
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