
Sign up to save your podcasts
Or


Ida and I discuss the current landscape of reinforcement learning in both natural and artificial intelligence, and how the old story of two RL systems in brains - model-free and model-based - is giving way to a more nuanced story of these two systems constantly interacting and additional RL strategies between model-free and model-based to drive the vast repertoire of our habits and goal-directed behaviors. We discuss Ida’s work on one of those “in-between” strategies, the successor representation RL strategy, which maps onto brain activity and accounts for behavior. We also discuss her interesting background and how it affects her outlook and research pursuit, and the role philosophy has played and continues to play in her thought processes.
Related links:
Time stamps:
0:00 - Intro
By Paul Middlebrooks4.8
134134 ratings
Ida and I discuss the current landscape of reinforcement learning in both natural and artificial intelligence, and how the old story of two RL systems in brains - model-free and model-based - is giving way to a more nuanced story of these two systems constantly interacting and additional RL strategies between model-free and model-based to drive the vast repertoire of our habits and goal-directed behaviors. We discuss Ida’s work on one of those “in-between” strategies, the successor representation RL strategy, which maps onto brain activity and accounts for behavior. We also discuss her interesting background and how it affects her outlook and research pursuit, and the role philosophy has played and continues to play in her thought processes.
Related links:
Time stamps:
0:00 - Intro

2,674 Listeners

26,308 Listeners

2,460 Listeners

540 Listeners

247 Listeners

938 Listeners

4,174 Listeners

505 Listeners

208 Listeners

304 Listeners

97 Listeners

531 Listeners

26 Listeners

142 Listeners

265 Listeners