SIMULATED ANNEALING TYPE ALGORITHMS FOR MULTIVARIATE OPTIMIZATION

被引:21
|
作者
GELFAND, SB
MITTER, SK
机构
[1] MIT,INFORMAT & DECIS SYST LAB,CAMBRIDGE,MA 02139
[2] MIT,DEPT ELECT ENGN & COMP SCI,CAMBRIDGE,MA 02139
关键词
SIMULATED ANNEALING; RANDOM SEARCH; STOCHASTIC APPROXIMATION;
D O I
10.1007/BF01759052
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
We study the convergence of a class of discrete-time continuous-state simulated annealing type algorithms for multivariate optimization. The general algorithm that we consider is of the form X(k + 1) = X(k) - a(k)(DELTA-U(X(k)) + zeta-k) + b(k)W(k). Here U(.) is a smooth function on a compact subset of R(d), {zeta-k} is a sequence of R(d)-valued random variables, {W(k)} is a sequence of independent standard d-dimensional Gaussian random variables, and {a(k)}, {b(k)} are sequences of positive numbers which tend to zero. These algorithms arise by adding decreasing white Gaussian noise to gradient descent, random search, and stochastic approximation algorithms. We show under suitable conditions on U(.), {zeta-k}, {a-k}, and {b-k} that X(k) converges in probability to the set of global minima of U(.). A careful treatment of how X(k) is restricted to a compact set and its effect on convergence is given.
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页码:419 / 436
页数:18
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