World Wide relies on analytics signals to operate securely and keep research services available. Accept to continue, or leave the site.
Review the Privacy Policy for details about analytics processing.
Prof
Google Deep Mind, University College London
Showing your local timezone
Schedule
Friday, June 12, 2020
2:00 PM Europe/London
Seminar location
No geocoded details are available for this content yet.
Recording provided by the organiser.
Format
Recorded Seminar
Recording
Available
Host
The Neurotheory Forum
Duration
70.00 minutes
Seminar location
No geocoded details are available for this content yet.
Model-based approaches to control and decision making have long held the promise of being more powerful and data efficient than model-free counterparts. However, success with model-based methods has been limited to those cases where a perfect model can be queried. The game of Go was mastered by AlphaGo using a combination of neural networks and the MCTS planning algorithm. But planning required a perfect representation of the game rules. I will describe new algorithms that instead leverage deep neural networks to learn models of the environment which are then used to plan, and update policy and value functions. These new algorithms offer hints about how brains might approach planning and acting in complex environments.
Timothy Lillicrap
Prof
Google Deep Mind, University College London
Contact & Resources
neuro
Decades of research on understanding the mechanisms of attentional selection have focused on identifying the units (representations) on which attention operates in order to guide prioritized sensory p
neuro
neuro