Бібліографічний опис:
Nahirnyi, Oleksii. Reinforcement Learning Agents in Procedurally-generated Environments with Sparse Rewards / Oleksii Nahirnyi; Supervisor: Dr. Pablo Maldonado; Ukrainian Catholic University, Faculty of Applied Sciences, Department of Computer Sciences. – Lviv 2022. – 45 p.
Короткий опис (реферат):
Solving sparse-reward environments is one of the most considerable challenges for
state-of-the-art (SOTA) Reinforcement Learning (RL). Recent usage of sparse-rewards
in procedurally-generated environments (PGE) to more adequately measure agent’s
generalization capabilities via randomization makes this challenge even harder. Despite
some progress of newly created exploration-based algorithms in MiniGrid PGEs,
the task remains open for research in terms of improving sample complexity. We
contribute to solving this task by creating a new formulation of exploratory intrinsic
reward. We base this formulation on a thorough review and categorization of other
methods in this area. Agent that optimizes an RL objective with such a formulation
performs better than SOTA methods in some small or medium sized PGEs.