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BI 154 Anne Collins: Learning with Working Memory
FromBrain Inspired
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Length:
82 minutes
Released:
Nov 29, 2022
Format:
Podcast episode
Description
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Anne Collins runs her Computational Cognitive Neuroscience Lab at the University of California, Berkley One of the things she's been working on for years is how our working memory plays a role in learning as well, and specifically how working memory and reinforcement learning interact to affect how we learn, depending on the nature of what we're trying to learn. We discuss that interaction specifically. We also discuss more broadly how segregated and how overlapping and interacting our cognitive functions are, what that implies about our natural tendency to think in dichotomies - like MF vs MB-RL, system-1 vs system-2, etc., and we dive into plenty other subjects, like how to possibly incorporate these ideas into AI.
Computational Cognitive Neuroscience Lab.Twitter: @ccnlab or @Anne_On_Tw.Related papers:How Working Memory and Reinforcement Learning Are Intertwined: A Cognitive, Neural, and Computational Perspective. Beyond simple dichotomies in reinforcement learning.The Role of Executive Function in Shaping Reinforcement Learning.What do reinforcement learning models measure? Interpreting model parameters in cognition and neuroscience.
0:00 - Intro
5:25 - Dimensionality of learning
11:19 - Modularity of function and computations
16:51 - Is working memory a thing?
19:33 - Model-free model-based dichotomy
30:40 - Working memory and RL
44:43 - How working memory and RL interact
50:50 - Working memory and attention
59:37 - Computations vs. implementations
1:03:25 - Interpreting results
1:08:00 - Working memory and AI
Anne Collins runs her Computational Cognitive Neuroscience Lab at the University of California, Berkley One of the things she's been working on for years is how our working memory plays a role in learning as well, and specifically how working memory and reinforcement learning interact to affect how we learn, depending on the nature of what we're trying to learn. We discuss that interaction specifically. We also discuss more broadly how segregated and how overlapping and interacting our cognitive functions are, what that implies about our natural tendency to think in dichotomies - like MF vs MB-RL, system-1 vs system-2, etc., and we dive into plenty other subjects, like how to possibly incorporate these ideas into AI.
Computational Cognitive Neuroscience Lab.Twitter: @ccnlab or @Anne_On_Tw.Related papers:How Working Memory and Reinforcement Learning Are Intertwined: A Cognitive, Neural, and Computational Perspective. Beyond simple dichotomies in reinforcement learning.The Role of Executive Function in Shaping Reinforcement Learning.What do reinforcement learning models measure? Interpreting model parameters in cognition and neuroscience.
0:00 - Intro
5:25 - Dimensionality of learning
11:19 - Modularity of function and computations
16:51 - Is working memory a thing?
19:33 - Model-free model-based dichotomy
30:40 - Working memory and RL
44:43 - How working memory and RL interact
50:50 - Working memory and attention
59:37 - Computations vs. implementations
1:03:25 - Interpreting results
1:08:00 - Working memory and AI
Released:
Nov 29, 2022
Format:
Podcast episode
Titles in the series (99)
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