Convergence of Langevin-simulated annealing algorithms with multiplicative noise II: Total variation

IF 0.8 Q3 STATISTICS & PROBABILITY Monte Carlo Methods and Applications Pub Date : 2022-05-30 DOI:10.1515/mcma-2023-2009
Pierre Bras, G. Pagès
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引用次数: 4

Abstract

Abstract We study the convergence of Langevin-simulated annealing type algorithms with multiplicative noise, i.e. for V : R d → R V\colon\mathbb{R}^{d}\to\mathbb{R} a potential function to minimize, we consider the stochastic differential equation d ⁢ Y t = − σ ⁢ σ ⊤ ⁢ ∇ V ⁢ ( Y t ) ⁢ d ⁢ t + a ⁢ ( t ) ⁢ σ ⁢ ( Y t ) ⁢ d ⁢ W t + a ⁢ ( t ) 2 ⁢ Υ ⁢ ( Y t ) ⁢ d ⁢ t dY_{t}=-\sigma\sigma^{\top}\nabla V(Y_{t})\,dt+a(t)\sigma(Y_{t})\,dW_{t}+a(t)^{2}\Upsilon(Y_{t})\,dt , where ( W t ) (W_{t}) is a Brownian motion, σ : R d → M d ⁢ ( R ) \sigma\colon\mathbb{R}^{d}\to\mathcal{M}_{d}(\mathbb{R}) is an adaptive (multiplicative) noise, a : R + → R + a\colon\mathbb{R}^{+}\to\mathbb{R}^{+} is a function decreasing to 0 and where Υ is a correction term. Allowing 𝜎 to depend on the position brings faster convergence in comparison with the classical Langevin equation d ⁢ Y t = − ∇ V ⁢ ( Y t ) ⁢ d ⁢ t + σ ⁢ d ⁢ W t dY_{t}=-\nabla V(Y_{t})\,dt+\sigma\,dW_{t} . In a previous paper, we established the convergence in L 1 L^{1} -Wasserstein distance of Y t Y_{t} and of its associated Euler scheme Y ¯ t \bar{Y}_{t} to argmin ⁡ ( V ) \operatorname{argmin}(V) with the classical schedule a ⁢ ( t ) = A ⁢ log − 1 / 2 ⁡ ( t ) a(t)=A\log^{-1/2}(t) . In the present paper, we prove the convergence in total variation distance. The total variation case appears more demanding to deal with and requires regularization lemmas.
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具有乘性噪声的langevin模拟退火算法的收敛性II:总变分
研究了具有乘性噪声的langevin模拟退火算法的收敛性,即对于V:R d→R V \colon\mathbb{R} ^{d}\to\mathbb{R}一个最小化的势函数,我们考虑随机微分方程d²Y t=- σ∑∑∞∞∞V(Y t)∑d∑t+a∑(t)∑∑(Y t)∑d∑W t+a∑(t)²∑(t)²{dY_t}=- \sigma\sigma{\top}\nabla V{(Y_t)}\,dt+a(t)²\sigma (Y_t){\,}dW_t{+a(t)}²{}\Upsilon (Y_t){\,dt,其中(W t) }(W_t){是布朗运动,σ:R d→M d²(R) }\sigma\colon\mathbb{R} ^{d}\to\mathcal{M} _d{(}\mathbb{R})是一个自适应(乘性)噪声,a: R +→R + a \colon\mathbb{R} ^{+}\to\mathbb{R} ^{+}是一个递减到0的函数,其中Υ是一个校正项。与经典朗之万方程d¹Y t=-∇V∑(Y t)∑d∑W t dY_t=- {}\nabla V{(Y_t)}\,dt+ \sigma \,{dW_t}相比,允许其依赖于位置带来了更快的收敛速度。在上一篇文章中,我们建立了在l1l ^{1} -Wasserstein距离下,Y t {Y_t}及其相关的欧拉格式Y¯t \bar{Y} _t{到argmin (V) }\operatorname{argmin} (V)的收敛性,其经典调度为a¹(t)= a²log -1/2(t) a(t)= a \log ^{-1/2}(t)。本文证明了该算法在总变差距离上的收敛性。全变分情况的处理难度更大,需要正则化引理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Monte Carlo Methods and Applications
Monte Carlo Methods and Applications STATISTICS & PROBABILITY-
CiteScore
1.20
自引率
22.20%
发文量
31
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