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Ergodic Annealing

2020-08-01Unverified0· sign in to hype

Carlo Baldassi, Fabio Maccheroni, Massimo Marinacci, Marco Pirazzini

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Abstract

Simulated Annealing is the crowning glory of Markov Chain Monte Carlo Methods for the solution of NP-hard optimization problems in which the cost function is known. Here, by replacing the Metropolis engine of Simulated Annealing with a reinforcement learning variation -- that we call Macau Algorithm -- we show that the Simulated Annealing heuristic can be very effective also when the cost function is unknown and has to be learned by an artificial agent.

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