Searched for: author%3A%22Liu%2C+Di%22
(1 - 1 of 1)
document
Baldi, S. (author), Zhang, Z. (author), Liu, Di (author)
We propose a new reinforcement learning method in the framework of Recursive Least Squares-Temporal Difference (RLS-TD). Instead of using the standard mechanism of eligibility traces (resulting in RLS-TD((Formula presented.))), we propose to use the forgetting factor commonly used in gradient-based or least-square estimation, and we show that...
journal article 2022