Context-Dependent Upper-Confidence Bounds for Directed Exploration
November 15, 2018 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Raksha Kumaraswamy, Matthew Schlegel, Adam White, Martha White
arXiv ID
1811.06629
Category
cs.LG: Machine Learning
Cross-listed
cs.AI
Citations
13
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Directed exploration strategies for reinforcement learning are critical for learning an optimal policy in a minimal number of interactions with the environment. Many algorithms use optimism to direct exploration, either through visitation estimates or upper confidence bounds, as opposed to data-inefficient strategies like ฮต-greedy that use random, undirected exploration. Most data-efficient exploration methods require significant computation, typically relying on a learned model to guide exploration. Least-squares methods have the potential to provide some of the data-efficiency benefits of model-based approaches -- because they summarize past interactions -- with the computation closer to that of model-free approaches. In this work, we provide a novel, computationally efficient, incremental exploration strategy, leveraging this property of least-squares temporal difference learning (LSTD). We derive upper confidence bounds on the action-values learned by LSTD, with context-dependent (or state-dependent) noise variance. Such context-dependent noise focuses exploration on a subset of variable states, and allows for reduced exploration in other states. We empirically demonstrate that our algorithm can converge more quickly than other incremental exploration strategies using confidence estimates on action-values.
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