Machine Learning Street Talk (MLST)

MULTI AGENT LEARNING - LANCELOT DA COSTA

34 snips
Nov 5, 2023
Lance Da Costa, a PhD candidate at Imperial College London, dives into the fascinating intersection of cognitive systems and AI. He discusses his work on the free energy principle, arguing that all intelligent agents minimize free energy for perception and decision-making. The conversation covers the advantages of active inference over traditional AI methods, highlighting its potential for safety and explainability. Lance also examines the challenges of structured learning and the role of Bayesian model reduction in adapting agents to changing environments.
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INSIGHT

Disenchantment with Deep Learning

  • Lance initially found deep learning unprincipled due to its lack of proofs and guarantees.
  • He sought a deeper understanding of intelligence, leading him to the free energy principle.
INSIGHT

Free Energy Principle

  • The free energy principle posits that intelligent agents minimize free energy for perception, action, and decision-making.
  • Da Costa aimed to provide mathematical proofs for this principle, starting from basic physics.
INSIGHT

Agent-Environment Interaction

  • The free energy principle rests on the assumption of agents interacting with environments through boundaries.
  • These boundaries comprise sensory and active states, forming a cybernetic loop.
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