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(Legacy) Convergence Research Center for Wellness
1. Journal Articles
An efficient GP approach to recognizing cognitive tasks from fNIRS neural signals
An, Jin Ung
;
Lee, JongHyun
;
Ahn, ChangWook
ETC
1. Journal Articles
Division of Intelligent Robot
Brain Robot Augmented InteractioN(BRAIN) Laboratory
1. Journal Articles
(Legacy) Convergence Research Center for Wellness
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Title
An efficient GP approach to recognizing cognitive tasks from fNIRS neural signals
DGIST Authors
An, Jin Ung
Issued Date
2013-10
Citation
An, Jin Ung. (2013-10). An efficient GP approach to recognizing cognitive tasks from fNIRS neural signals. doi: 10.1007/s11432-013-5001-8
Type
Article
Article Type
Article
Subject
Classification
;
Classification (of Information)
;
Cognitive Task
;
Destructive Process
;
fNIRS
;
Forestry
;
Functional Neuroimaging
;
Genetic Programming
;
Information Retrieval
;
Mathematics
;
Multi-Class Problems
;
Multi-Tree Representation
;
Neural Signals
;
Non-Stationary
;
Sub Trees
;
Trees
;
Trees (Mathematics)
ISSN
1674-733X
Abstract
This paper presents a new genetic programming (GP) approach to accurately classifying cognitive tasks from non-stationary and noisy fNIRS neural signals. To this end, a new GP that effectively handles multiclass problems is developed. In accordance with multi-tree structure, GP operators are innovated: crossover exchanges every subtree of parents without suffering from any incongruity problem and mutation fine-tunes candidate solutions by a less destructive process. Experimental results verifies the effectiveness of the proposed GP classifier over existing references. © 2013 Science China Press and Springer-Verlag Berlin Heidelberg.
URI
http://hdl.handle.net/20.500.11750/1602
DOI
10.1007/s11432-013-5001-8
Publisher
SCIENCE PRESS
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