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VUSFA:Variational Universal Successor Features Approximator to Improve Transfer DRL for Target Driven Visual Navigation

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arxiv 1908.06376 v1 pith:ETUOA47A submitted 2019-08-18 cs.LG cs.AIcs.NEstat.ML

VUSFA:Variational Universal Successor Features Approximator to Improve Transfer DRL for Target Driven Visual Navigation

classification cs.LG cs.AIcs.NEstat.ML
keywords successortransferapproachconceptdrivenfeatureslearningnavigation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we show how novel transfer reinforcement learning techniques can be applied to the complex task of target driven navigation using the photorealistic AI2THOR simulator. Specifically, we build on the concept of Universal Successor Features with an A3C agent. We introduce the novel architectural contribution of a Successor Feature Dependant Policy (SFDP) and adopt the concept of Variational Information Bottlenecks to achieve state of the art performance. VUSFA, our final architecture, is a straightforward approach that can be implemented using our open source repository. Our approach is generalizable, showed greater stability in training, and outperformed recent approaches in terms of transfer learning ability.

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