Stochastic Approximation Trackers for Model-Based Search

A. Joseph, S. Bhatnagar
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Abstract

In this paper, we propose multi-timescale, sequential algorithms for deterministic optimization which can find high-quality solutions. The algorithms fundamentally track the well-known derivative-free model-based search methods in an efficient and resourceful manner with additional heuristics to accelerate the scheme. Our approaches exhibit competitive performance on a selected few global optimization benchmark problems.
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基于模型搜索的随机逼近跟踪器
在本文中,我们提出了多时间尺度、顺序的确定性优化算法,可以找到高质量的解。该算法从根本上跟踪了众所周知的基于无导数模型的搜索方法,并以有效和灵活的方式增加了启发式来加速方案。我们的方法在选定的几个全局优化基准问题上表现出具有竞争力的性能。
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