Novel function approximation techniques for large-scale reinforcement learning
Function approximation can be used to improve the performance of reinforcement learners. Traditional techniques, including Tile Coding and Kanerva Coding, can give poor performance when applied to large-scale problems. In our preliminary work, we show that this poor performance is caused by prototyp...
Published: |
|
---|---|
Online Access: | http://hdl.handle.net/2047/d20000932 |
Similar Items
-
Function approximation-based reinforcement learning for large-scale problem domains
Published: () -
Sparse Value Function Approximation for Reinforcement Learning
by: Painter-Wakefield, Christopher Robert
Published: (2013) -
Fuzzy and tile coding approximation techniques for coevolution in reinforcement learning
by: Tokarchuk, Laurissa Nadia
Published: (2005) -
Hierarchical Reinforcement Learning with Function Approximation for Adaptive Control
by: Skelly, Margaret Mary
Published: (2004) -
Reinforcement learning for the control of large-scale systems
by: Chan, K. H.
Published: (2001)