Optimality-based Analysis of XCSF Compaction in Discrete Reinforcement Learning
Jordan T. Bishop,
Marcus Gallagher
Abstract:Learning classifier systems (LCSs) are population-based predictive systems that were originally envisioned as agents to act in reinforcement learning (RL) environments. These systems can suffer from population bloat and so are amenable to compaction techniques that try to strike a balance between population size and performance. A wellstudied LCS architecture is XCSF, which in the RL setting acts as a Qfunction approximator. We apply XCSF to a deterministic and stochastic variant of the FrozenLake8x8 environme… Show more
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