Broad-persistent Advice for Interactive Reinforcement Learning Scenarios (2210.05187v1)
Abstract: The use of interactive advice in reinforcement learning scenarios allows for speeding up the learning process for autonomous agents. Current interactive reinforcement learning research has been limited to real-time interactions that offer relevant user advice to the current state only. Moreover, the information provided by each interaction is not retained and instead discarded by the agent after a single use. In this paper, we present a method for retaining and reusing provided knowledge, allowing trainers to give general advice relevant to more than just the current state. Results obtained show that the use of broad-persistent advice substantially improves the performance of the agent while reducing the number of interactions required for the trainer.
- Francisco Cruz (37 papers)
- Adam Bignold (4 papers)
- Hung Son Nguyen (3 papers)
- Richard Dazeley (35 papers)
- Peter Vamplew (24 papers)