YO

Y. Oren

2 records found

Deep, model based reinforcement learning has shown state of the art, human-exceeding performance in many challenging domains.
Low sample efficiency and limited exploration remain however as leading obstacles in the field.
In this work, we incorporate epistemic uncertain ...
Identifying the most efficient exploration approach for deep reinforcement learning in traffic light control is not a trivial task, and can be a critical step in the development of reinforcement learning solutions that can effectively reduce traffic congestion. It is common to us ...