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Poster

Mo' States Mo' Problems: Emergency Stop Mechanisms from Observation

Samuel Ainsworth · Matt Barnes · Siddhartha Srinivasa

East Exhibition Hall B + C #227

Keywords: [ Reinforcement Learning and Planning ] [ Reinforcement Learning ]


Abstract:

In many environments, only a relatively small subset of the complete state space is necessary in order to accomplish a given task. We develop a simple technique using emergency stops (e-stops) to exploit this phenomenon. Using e-stops significantly improves sample complexity by reducing the amount of required exploration, while retaining a performance bound that efficiently trades off the rate of convergence with a small asymptotic sub-optimality gap. We analyze the regret behavior of e-stops and present empirical results in discrete and continuous settings demonstrating that our reset mechanism can provide order-of-magnitude speedups on top of existing reinforcement learning methods.

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