PLoS Computational Biology (Aug 2014)

Optimal behavioral hierarchy.

  • Alec Solway,
  • Carlos Diuk,
  • Natalia Córdova,
  • Debbie Yee,
  • Andrew G Barto,
  • Yael Niv,
  • Matthew M Botvinick

DOI
https://doi.org/10.1371/journal.pcbi.1003779
Journal volume & issue
Vol. 10, no. 8
p. e1003779

Abstract

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Human behavior has long been recognized to display hierarchical structure: actions fit together into subtasks, which cohere into extended goal-directed activities. Arranging actions hierarchically has well established benefits, allowing behaviors to be represented efficiently by the brain, and allowing solutions to new tasks to be discovered easily. However, these payoffs depend on the particular way in which actions are organized into a hierarchy, the specific way in which tasks are carved up into subtasks. We provide a mathematical account for what makes some hierarchies better than others, an account that allows an optimal hierarchy to be identified for any set of tasks. We then present results from four behavioral experiments, suggesting that human learners spontaneously discover optimal action hierarchies.