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A stochastically evolving non-local search and solutions to inverse problems with sparse data

机译:随机演化的非局部搜索和稀疏数据反问题的解决方案

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Building on a martingale approach to global optimization, a powerful stochastic search scheme for the global optimum of cost functions is proposed using change of measures on the states that evolve as diffusion processes and splitting of the state-space along the lines of a Bayesian game. To begin with, the efficacy of the optimizer, when contrasted with one of the most efficient existing schemes, is assessed against a family of No-hard benchmark problems. Then, using both simulated and experimental data, potentialities of the new proposal are further explored in the context of an inverse problem of significance in photoacoustic imaging, wherein the superior"reconstruction features of a global search vis-a-vis the commonly adopted local or quasi-local schemes are brought into relief. (C) 2016 Elsevier Ltd. All rights reserved.
机译:基于a的全局优化方法,提出了一种功能强大的随机搜索方案,用于成本函数的全局最优,该方法使用随着扩散过程演变的状态的度量变化以及沿贝叶斯博弈的路线划分状态空间而提出的一种强大的随机搜索方案。首先,与一系列最有效的现有方案进行对比时,针对一系列No-hard基准问题评估了优化器的功效。然后,使用模拟和实验数据,在光声成像的重要性反问题的背景下进一步探索新提议的潜力,其中,相对于通常采用的局部或局部搜索,全局搜索的优越的“重构”特征(C)2016 Elsevier Ltd.保留所有权利。

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