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- Title
Enhancing Learning Efficiency in FACL: A Novel Fuzzy Rule Transfer Method for Transfer Learning.
- Authors
Ni, Dawei; Schwartz, Howard M.
- Abstract
The concept of leveraging knowledge from previous experience to accelerate learning forms the crux of transfer learning. Within the realm of reinforcement learning (RL), the agent typically requires protracted interaction with the environment, which can be time-consuming and can lead to slow convergence. Transfer learning offers a promising solution in such settings. In this paper, we investigate the application of transfer learning in the fuzzy reinforcement learning domain, specifically within the context of differential games. We introduce a novel approach for knowledge transfer across analogous tasks, employing fuzzy logic controllers as function approximators, notably within the Fuzzy Actor-Critic Learning (FACL) algorithm. Specifically, we propose a strategy for fuzzy rule transfer aimed at mapping fuzzy rules between the source and target tasks. The target task is assumed to be related to the source task yet it contains more complex states. Our approach has been implemented and tested within the domain of differential games in which all state space and action space are continuous. The simulation outcomes demonstrate that the application of knowledge transfer enables RL agents to learn faster and achieve asymptotic performance more rapidly in the target task.
- Subjects
REINFORCEMENT learning; DIFFERENTIAL games; KNOWLEDGE transfer; FUZZY logic
- Publication
International Journal of Fuzzy Systems, 2024, Vol 26, Issue 4, p1215
- ISSN
1562-2479
- Publication type
Article
- DOI
10.1007/s40815-023-01662-3