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Stochastic optimization with adaptive restart: a framework for integrated local and global learning

机译:随机重启随机优化:综合本地和全球学习的框架

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A common approach to global optimization is to combine local optimization methods with random restarts. Restarts have been used as a performance boosting approach. They can be a means to avoid "slow progress" by exploiting a potentially good solution, and restarts can enable the potential discovery of multiple local solutions, thus improving the overall quality of the returned solution. A multi-start method is a way to integrate local and global approaches; where the global search itself can be used to restart a local search. Bayesian optimization methods aim to find global optima of functions that can only be point-wise evaluated by means of a possibly expensive oracle. We propose the stochastic optimization with adaptive restart (SOAR) framework, that uses the predictive capability of Gaussian process models as a means to adaptively restart local search and intelligently select restart locations with current information. This approach attempts to balance exploitation with exploration of the solution space. We study the asymptotic convergence of SOAR to a global optimum, and empirically evaluate SOAR performance through a specific implementation that uses the Trust Region method as the local search component. Numerical experiments show that the proposed algorithm outperforms existing methodologies over a suite of test problems of varying problem dimension with a finite budget of function evaluations.
机译:全局优化的常见方法是将局部优化方法组合随机重启。重新启动已被用作性能提升方法。它们可以是通过利用潜在的良好解决方案来避免“进展缓慢”的手段,并重新启动可以实现多个本地解决方案的潜在发现,从而提高返回解决方案的整体质量。多启动方法是整合本地和全局方法的一种方式;在全局搜索本身可用于重新启动本地搜索。贝叶斯优化方法旨在查找全局最佳函数,只能通过可能昂贵的Oracle评估的Point-Wise。我们提出了具有自适应重启(SOAR)框架的随机优化,该框架使用高斯过程模型的预测能力作为自适应地重新启动本地搜索的手段,并智能地选择具有当前信息的重新启动位置。这种方法试图通过探索解决方案空间来平衡利用。我们研究飙升到全局最优的渐近融合,并通过使用信任区域方法作为本地搜索组件的特定实现来凭经验评估SOAR性能。数值实验表明,该算法在具有功能评估的有限预算的不同问题尺寸的套件中优于现有方法。

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