From reinforcement learning to agency: Frameworks for understanding basal cognition

Biosystems. 2024 Jan:235:105107. doi: 10.1016/j.biosystems.2023.105107. Epub 2023 Dec 19.

Abstract

Organisms play, explore, and mimic those around them. Is there a purpose to this behavior? Are organisms just behaving, or are they trying to achieve goals? We believe this is a false dichotomy. To that end, to understand organisms, we attempt to unify two approaches for understanding complex agents, whether evolved or engineered. We argue that formalisms describing multiscale competencies and goal-directedness in biology (e.g., TAME), and reinforcement learning (RL), can be combined in a symbiotic framework. While RL has been largely focused on higher-level organisms and robots of high complexity, TAME is naturally capable of describing lower-level organisms and minimal agents as well. We propose several novel questions that come from using RL/TAME to understand biology as well as ones that come from using biology to formulate new theory in AI. We hope that the research programs proposed in this piece shape future efforts to understand biological organisms and also future efforts to build artificial agents.

Keywords: AI; Agency; Goal-directedness; Machine learning; Reinforcement learning; Teleonomy.

MeSH terms

  • Cognition
  • Learning*
  • Motivation
  • Reinforcement, Psychology*