Multi-subject brain decoding with multi-task feature selection

نویسندگان
چکیده

منابع مشابه

Multi-subject brain decoding with multi-task feature selection.

In the neural science society, multi-subject brain decoding is of great interest. However, due to the variability of activation patterns across brains, it is difficult to build an effective decoder using fMRI samples pooled from different subjects. In this paper, a hierarchical model is proposed to extract robust features for decoding. With feature selection for each subject treated as a separa...

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ژورنال

عنوان ژورنال: Bio-Medical Materials and Engineering

سال: 2014

ISSN: 0959-2989,1878-3619

DOI: 10.3233/bme-141119