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Improving Simulated Annealing through Derandomization

12 May 2015
Mathieu Gerber
L. Bornn
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Abstract

We propose and study a version of simulated annealing (SA) on continuous state spaces based on (t,s)R(t,s)_R(t,s)R​-sequences. The parameter R∈NˉR\in\bar{\mathbb{N}}R∈Nˉ regulates the degree of randomness of the input sequence, with the case R=0R=0R=0 corresponding to IID uniform random numbers and the limiting case R=∞R=\inftyR=∞ to (t,s)(t,s)(t,s)-sequences. Our main result, obtained for rectangular domains, shows that the resulting optimization method, which we refer to as QMC-SA, converges almost surely to the global optimum of the objective function φ\varphiφ for any R∈NR\in\mathbb{N}R∈N. When φ\varphiφ is univariate, we are in addition able to show that the completely deterministic version of QMC-SA is convergent. A key property of these results is that they do not require objective-dependent conditions on the cooling schedule. As a corollary of our theoretical analysis, we provide a new almost sure convergence result for SA which shares this property under minimal assumptions on φ\varphiφ. We further explain how our results in fact apply to a broader class of optimization methods including for example threshold accepting, for which to our knowledge no convergence results currently exist. We finally illustrate the superiority of QMC-SA over SA algorithms in a numerical study.

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