QMDP-Net: Deep Learning for Planning under Partial Observability
Karkus, Peter, Hsu, David, Lee, Wee Sun
–Neural Information Processing Systems
This paper introduces the QMDP-net, a neural network architecture for planning under partial observability. The QMDP-net combines the strengths of model-free learning and model-based planning. It is a recurrent policy network, but it represents a policy for a parameterized set of tasks by connecting a model with a planning algorithm that solves the model, thus embedding the solution structure of planning in a network learning architecture. The QMDP-net is fully differentiable and allows for end-to-end training. We train a QMDP-net on different tasks so that it can generalize to new ones in the parameterized task set and "transfer" to other similar tasks beyond the set.
Neural Information Processing Systems
Feb-14-2020, 15:57:39 GMT
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