Publication | Open Access
Value Iteration Networks
228
Citations
34
References
2017
Year
Unknown Venue
Mathematical ProgrammingArtificial IntelligenceIncremental LearningValue Iteration NetworksEngineeringMachine LearningConvolutional Neural NetworkSequential LearningValue Function ApproximationEducationReinforcement Learning (Educational Psychology)Lifelong Reinforcement LearningReinforcement Learning (Computer Engineering)Data ScienceValue Iteration NetworkRobot LearningSequential Decision MakingComputer ScienceDeep LearningModel OptimizationDeep Reinforcement LearningAi PlanningDifferentiable Neural NetworkPlanning
We introduce the value iteration network (VIN): a fully differentiable neural network with a `planning module' embedded within. VINs can learn to plan, and are suitable for predicting outcomes that involve planning-based reasoning, such as policies for reinforcement learning. Key to our approach is a novel differentiable approximation of the value-iteration algorithm, which can be represented as a convolutional neural network, and trained end-to-end using standard backpropagation.We evaluate VIN based policies on discrete and continuous path-planning domains, and on a natural-language based search task. We show that by learning an explicit planning computation, VIN policies generalize better to new, unseen domains.This paper is a significantly abridged and IJCAI audience targeted version of the original NIPS 2016 paper with the same title, available here: https://arxiv.org/abs/1602.02867
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