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Simulated annealing from continuum to discretization: a convergence analysis via the Eyring--Kramers law

3 February 2021
Wenpin Tang
X. Zhou
ArXiv (abs)PDFHTML
Abstract

We study the convergence rate of continuous-time simulated annealing (Xt; t≥0)(X_t; \, t \ge 0)(Xt​;t≥0) and its discretization (xk; k=0,1,…)(x_k; \, k =0,1, \ldots)(xk​;k=0,1,…) for approximating the global optimum of a given function fff. We prove that the tail probability P(f(Xt)>min⁡f+δ)\mathbb{P}(f(X_t) > \min f +\delta)P(f(Xt​)>minf+δ) (resp. P(f(xk)>min⁡f+δ)\mathbb{P}(f(x_k) > \min f +\delta)P(f(xk​)>minf+δ)) decays polynomial in time (resp. in cumulative step size), and provide an explicit rate as a function of the model parameters. Our argument applies the recent development on functional inequalities for the Gibbs measure at low temperatures -- the Eyring-Kramers law. In the discrete setting, we obtain a condition on the step size to ensure the convergence.

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