2023
DOI: 10.48550/arxiv.2301.12038
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STEERING: Stein Information Directed Exploration for Model-Based Reinforcement Learning

Abstract: Directed Exploration is a crucial challenge in reinforcement learning (RL), especially when rewards are sparse. Information-directed sampling (IDS), which optimizes the information ratio, seeks to do so by augmenting regret with information gain. However, estimating information gain is computationally intractable or relies on restrictive assumptions which prohibit its use in many practical instances. In this work, we posit an alternative exploration incentive in terms of the integral probability metric (IPM) b… Show more

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