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ICML
2009
IEEE

Monte-Carlo simulation balancing

14 years 5 months ago
Monte-Carlo simulation balancing
In this paper we introduce the first algorithms for efficiently learning a simulation policy for Monte-Carlo search. Our main idea is to optimise the balance of a simulation policy, so that an accurate spread of simulation outcomes is maintained, rather than optimising the direct strength of the simulation policy. We develop two algorithms for balancing a simulation policy by gradient descent. The first algorithm optimises the balance of complete simulations, using a policy gradient algorithm; whereas the second algorithm optimises the balance over every two steps of simulation. We compare our algorithms to reinforcement learning and supervised learning algorithms for maximising the strength of the simulation policy. We test each algorithm in the domain of 5 ? 5 and 6 ? 6 Computer Go, using a softmax policy that is parameterised by weights for a hundred simple patterns. When used in a simple MonteCarlo search, the policies learnt by simulation balancing achieved significantly better p...
David Silver, Gerald Tesauro
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 2009
Where ICML
Authors David Silver, Gerald Tesauro
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