USING DEEP REINFORCEMENT LEARNING TO REVEAL NEURAL REPRESENTATIONS OF EXPLORATION
The Weizmann Institute of Science
Presentation
Date TBA
Event Information
Poster Board
PS02-07PM-570
Poster
View posterAbstract
Recommended posters
DYNAMIC INTEGRATION OF DISSOCIABLE VALUE CODES FOR REWARD AND INFORMATION IN THE HUMAN PREFRONTAL CORTEX
Keyu Hu, Changlin Bai, Yi Yao, Haiyan Wu
COMPUTATIONAL MOTIVES AND NEURAL SIGNATURES DISTINGUISH EPISTEMIC INFORMATION SEEKING FROM REWARD SEEKING
Yinan Cao, Clémence Alméras, Junseok K. Lee, Inès Maye, Valentin Wyart
FROM EXPLORATION TO CHOICE: NEURAL CORRELATES OF STOPPING DECISIONS IN OPEN-ENDED OPTION SPACES
Johanna Falk, Mathias Pessiglione
INTEGRATING REINFORCEMENT LEARNING AND CHOICE FREQUENCY TO INVESTIGATE HABITUAL BEHAVIOR
Hugo Fluhr, Viktor Timokhov, Philippe N. Tobler, Stephan Nebe
BELIEF-BASED REINFORCEMENT LEARNING EXPLAINS THE DYNAMICS OF MEMORY-DEPENDENT NAVIGATION UNDER UNCERTAINTY
Gonzalo Hernández Ortega, Paula Peixoto-Moledo, Yashar Ahmadian, Pablo E. Jercog
MODELING THE INTERPLAY OF MOTIVATION AND LEARNING IN MOUSE PERCEPTUAL DECISION-MAKING
Giulio Matteucci, Maëlle Guyoton, Lucile Favero Montero, Ludovico Grabau, Sami El-Boustani