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Value Propagation Networks

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arxiv 1805.11199 v2 pith:ZF7EJN57 submitted 2018-05-28 cs.AI cs.LG

Value Propagation Networks

classification cs.AI cs.LG
keywords learningvaluedynamicenvironmentsmodulesnavigationpropagationsizes
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present Value Propagation (VProp), a set of parameter-efficient differentiable planning modules built on Value Iteration which can successfully be trained using reinforcement learning to solve unseen tasks, has the capability to generalize to larger map sizes, and can learn to navigate in dynamic environments. We show that the modules enable learning to plan when the environment also includes stochastic elements, providing a cost-efficient learning system to build low-level size-invariant planners for a variety of interactive navigation problems. We evaluate on static and dynamic configurations of MazeBase grid-worlds, with randomly generated environments of several different sizes, and on a StarCraft navigation scenario, with more complex dynamics, and pixels as input.

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