What About Inputing Policy In Value Function: Policy Representation And Policy-extended Value Function Approximator
2020 Β· Hongyao Tang, Zhaopeng Meng, Jianye Hao, et al.
Abstract
We study Policy-extended Value Function Approximator (PeVFA) in Reinforcement Learning (RL), which extends conventional value function approximator (VFA) to take as input not only the state (and action) but also an explicit policy representation. Such an extension enables PeVFA to preserve values of multiple policies at the same time and brings an appealing characteristic, i.e., *value generalization among policies*. We formally analyze the value generalization under Generalized Policy Iteration (GPI). From theoretical and empirical lens, we show that generalized value estimates offered by PeVFA may have lower initial approximation error to true values of successive policies, which is expected to improve consecutive value approximation during GPI. Based on above clues, we introduce a new form of GPI with PeVFA which leverages the value generalization along policy improvement path. Moreover, we propose a representation learning framework for RL policy, providing several approaches to le
Authors
(none)
Tags
Stats
Related papers
- The Value-improvement Path: Towards Better Representations For Reinforcement Learning (2020)6.77
- Parameter-based Value Functions (2020)2.26
- Is There Value In Reinforcement Learning? (2025)0.00
- The Role Of Lookahead And Approximate Policy Evaluation In Reinforcement Learning With Linear Value Function Approximation (2021)0.00
- Unifying Value Iteration, Advantage Learning, And Dynamic Policy Programming (2017)0.00
- General Policy Evaluation And Improvement By Learning To Identify Few But Crucial States (2022)0.00
- Foresee Then Evaluate: Decomposing Value Estimation With Latent Future Prediction (2021)3.58
- Learning Value Functions In Deep Policy Gradients Using Residual Variance (2020)0.00