Title of article :
Mining EEG with SVM for Understanding Cognitive Underpinnings of Math Problem Solving Strategies
Author/Authors :
Bosch, Paul Facultad de Ingeníera - Universidad del Desarrollo, Santiago, Chile , Herrera, Mauricio Facultad de Ingeníera - Universidad del Desarrollo, Santiago, Chile , López, Julio Facultad de Ingeniería y Ciencias - Universidad Diego Portales, Santiago, Chile , Maldonado, Sebastián Facultad de Ingeniería y Ciencias Aplicadas - Universidad de los Andes - Monseñor Álvaro del Portillo, Santiago, Chile
Pages :
15
From page :
1
To page :
15
Abstract :
We have developed a new methodology for examining and extracting patterns from brain electric activity by using data mining and machine learning techniques. Data was collected from experiments focused on the study of cognitive processes that might evoke different specific strategies in the resolution of math problems. A binary classification problem was constructed using correlations and phase synchronization between different electroencephalographic channels as characteristics and, as labels or classes, the math performances of individuals participating in specially designed experiments. The proposed methodology is based on using well-established procedures of feature selection, which were used to determine a suitable brain functional network size related to math problem solving strategies and also to discover the most relevant links in this network without including noisy connections or excluding significant connections.
Keywords :
Mining EEG , SVM , Understanding Cognitive , Underpinnings , Math Problem Solving Strategies
Journal title :
Behavioural Neurology
Serial Year :
2018
Full Text URL :
Record number :
2605190
Link To Document :
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