A goal-centric outlook on learning
- PMID: 37696690
- DOI: 10.1016/j.tics.2023.08.011
A goal-centric outlook on learning
Abstract
Goals play a central role in human cognition. However, computational theories of learning and decision-making often take goals as given. Here, we review key empirical findings showing that goals shape the representations of inputs, responses, and outcomes, such that setting a goal crucially influences the central aspects of any learning process: states, actions, and rewards. We thus argue that studying goal selection is essential to advance our understanding of learning. By following existing literature in framing goal selection within a hierarchy of decision-making problems, we synthesize important findings on the principles underlying goal value attribution and exploration strategies. Ultimately, we propose that a goal-centric perspective will help develop more complete accounts of learning in both biological and artificial agents.
Keywords: abstraction; computational modeling; decision-making; goals; learning; motivation; reinforcement learning; rewards.
Copyright © 2023 Elsevier Ltd. All rights reserved.
Conflict of interest statement
Declaration of interests No interests are declared.

