Article

Tracking children's mental states while solving algebra equations.

Department of Psychology, Carnegie Mellon University, Pittsburgh, Pennsylvania. .
Human Brain Mapping (impact factor: 5.88). 09/2011; 33(11):2650-65. DOI:10.1002/hbm.21391 pp.2650-65
Source: PubMed

ABSTRACT Behavioral and function magnetic resonance imagery (fMRI) data were combined to infer the mental states of students as they interacted with an intelligent tutoring system. Sixteen children interacted with a computer tutor for solving linear equations over a six-day period (Days 0-5), with Days 1 and 5 occurring in an fMRI scanner. Hidden Markov model algorithms combined a model of student behavior with multi-voxel imaging pattern data to predict the mental states of students. We separately assessed the algorithms' ability to predict which step in a problem-solving sequence was performed and whether the step was performed correctly. For Day 1, the data patterns of other students were used to predict the mental states of a target student. These predictions were improved on Day 5 by adding information about the target student's behavioral and imaging data from Day 1. Successful tracking of mental states depended on using the combination of a behavioral model and multi-voxel pattern analysis, illustrating the effectiveness of an integrated approach to tracking the cognition of individuals in real time as they perform complex tasks. Hum Brain Mapp, 2012. © 2011 Wiley Periodicals, Inc.

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Keywords

algorithms' ability
 
complex tasks
 
Day 1
 
Day 1. Successful
 
Day 5
 
Days 1
 
fMRI scanner
 
function magnetic resonance imagery
 
Hidden Markov model algorithms
 
Hum Brain Mapp
 
integrated approach
 
intelligent tutoring system
 
linear equations
 
mental states
 
multi-voxel imaging pattern data
 
multi-voxel pattern analysis
 
real time
 
six-day period
 
target student's behavioral
 
© 2011 Wiley Periodicals
 

John R Anderson