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Learning with Stochastic Guidance for Navigation

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arxiv 1811.10756 v1 pith:IJ4FTKJ4 submitted 2018-11-27 cs.RO

Learning with Stochastic Guidance for Navigation

classification cs.RO
keywords navigationstochasticddpgframeworkguidancehighchooseissues
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Due to the sparse rewards and high degree of environment variation, reinforcement learning approaches such as Deep Deterministic Policy Gradient (DDPG) are plagued by issues of high variance when applied in complex real world environments. We present a new framework for overcoming these issues by incorporating a stochastic switch, allowing an agent to choose between high and low variance policies. The stochastic switch can be jointly trained with the original DDPG in the same framework. In this paper, we demonstrate the power of the framework in a navigation task, where the robot can dynamically choose to learn through exploration, or to use the output of a heuristic controller as guidance. Instead of starting from completely random moves, the navigation capability of a robot can be quickly bootstrapped by several simple independent controllers. The experimental results show that with the aid of stochastic guidance we are able to effectively and efficiently train DDPG navigation policies and achieve significantly better performance than state-of-the-art baselines models.

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