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arxiv: 1903.04698 · v2 · pith:67PQP5JBnew · submitted 2019-03-12 · ❄️ cond-mat.dis-nn · cond-mat.stat-mech

Generation of ice states through deep reinforcement learning

classification ❄️ cond-mat.dis-nn cond-mat.stat-mech
keywords policytrainedagentdeepframeworkgenerationlearningreinforcement
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We present a deep reinforcement learning framework where a machine agent is trained to search for a policy to generate a ground state for the square ice model by exploring the physical environment. After training, the agent is capable of proposing a sequence of local moves to achieve the goal. Analysis of the trained policy and the state value function indicates that the ice rule and loop-closing condition are learned without prior knowledge. We test the trained policy as a sampler in the Markov chain Monte Carlo and benchmark against the baseline loop algorithm. This framework can be generalized to other models with topological constraints where generation of constraint-preserving states is difficult.

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