Adaptive Exploration for Data-Efficient General Value Function Evaluations
–Neural Information Processing Systems
General Value Functions (GVFs) (Sutton et al., 2011) represent predictive knowledge in reinforcement learning. Each GVF computes the expected return for a given policy, based on a unique reward. Existing methods relying on fixed behavior policies or pre-collected data often face data efficiency issues when learning multiple GVFs in parallel using off-policy methods. To address this, we introduce GVFExplorer, which adaptively learns a single behavior policy that efficiently collects data for evaluating multiple GVFs in parallel. We use an existing temporal-difference-style variance estimator to approximate the return variance.
adaptive exploration, behavior policy, data-efficient general value function evaluation, (2 more...)
Neural Information Processing Systems
May-27-2025, 06:01:56 GMT
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