Neural bases for basic processes in heuristic problem solving: Take solving S udoku puzzles as an example
N ewell and S imon postulated that the basic steps in human problem‐solving involve iteratively applying operators to transform the state of the problem to eventually achieve a goal. To check the neural basis of this framework, the present study focused on the basic processes in human heuristic prob...
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Veröffentlicht in: | PsyCh journal (Victoria, Australia) Australia), 2012-12, Vol.1 (2), p.101-117 |
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Hauptverfasser: | , , , , , |
Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | N
ewell and
S
imon postulated that the basic steps in human problem‐solving involve iteratively applying operators to transform the state of the problem to eventually achieve a goal. To check the neural basis of this framework, the present study focused on the basic processes in human heuristic problem‐solving that the participants identified the current problem state and then recalled and applied the corresponding heuristic rules to change the problem state. A new paradigm, solving simplified
S
udoku puzzles, was developed for an event‐related functional magnetic resonance imaging (
fMRI
) study in problem solving. Regions of interest (
ROIs
), including the left prefrontal cortex, the bilateral posterior parietal cortex, the anterior cingulated cortex, the bilateral caudate nuclei, the bilateral fusiform, as well as the bilateral frontal eye fields, were found to be involved in the task. To obtain convergent evidence, in addition to traditional statistical analysis, we used the multivariate voxel classification method to check the accuracy of the predictions for the condition of the task from the blood oxygen level dependent (
BOLD
) response of the
ROIs,
using a new classifier developed in this study for
fMRI
data. To reveal the roles that the
ROIs
play in problem solving, we developed an
ACT‐R
computational model of the information‐processing processes in human problem solving, and tried to predict the
BOLD
response of the
ROIs
from the task. Advances in human problem‐solving research after
N
ewell and
S
imon are then briefly discussed. |
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ISSN: | 2046-0252 2046-0260 |
DOI: | 10.1002/pchj.15 |