Distributed representations of action sequences in anterior cingulate cortex: A recurrent neural network approach.

Journal: Psychonomic bulletin & review
Published Date:

Abstract

Anterior cingulate cortex (ACC) has been the subject of intense debate over the past 2 decades, but its specific computational function remains controversial. Here we present a simple computational model of ACC that incorporates distributed representations across a network of interconnected processing units. Based on the proposal that ACC is concerned with the execution of extended, goal-directed action sequences, we trained a recurrent neural network to predict each successive step of several sequences associated with multiple tasks. In keeping with neurophysiological observations from nonhuman animals, the network yields distributed patterns of activity across ACC neurons that track the progression of each sequence, and in keeping with human neuroimaging data, the network produces discrepancy signals when any step of the sequence deviates from the predicted step. These simulations illustrate a novel approach for investigating ACC function.

Authors

  • Danesh Shahnazian
    Department of Psychology, University of Victoria, P. O. Box 1700 STN CSC, Victoria, British Columbia, V8W 2Y2, Canada.
  • Clay B Holroyd
    Department of Psychology, University of Victoria, P. O. Box 1700 STN CSC, Victoria, British Columbia, V8W 2Y2, Canada. holroyd@uvic.ca.