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Likelihood-Based Random Search Technique for Solving Unconstrained Optimization Problems

机译:基于可能性的随机搜索技术解决不约束优化问题

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Although many methods have been devised for solving optimization problems, there still a pressing need for more effective and efficient techniques. Most of the proposed techniques are effective in solving the optimization problems. They, however, fall short when dealing with specific problems (e.g. problems with multiple local optima). This paper offers an innovative technique for optimization problems. The proposed method combines between the random-guided search and both techniques for identifying the promising regions of the search space and mapping techniques that bias the search to these promising regions; thereby quickly finding the global minimum values. Experiments with our prototype implementation showed that our method is effective in finding exact or very close approximation of the global minimum values for challenging functions obtained from well-known benchmarks. Our comparative study showed that our method is superior to other state-of-art methods.
机译:虽然已经设计了许多方法来解决优化问题,但仍然需要更有效和高效的技术。大多数所提出的技术在解决优化问题方面是有效的。然而,当处理特定问题时,它们跌缩(例如,多个本地Optima的问题)。本文提供了一种用于优化问题的创新技术。所提出的方法组合在随机引导的搜索和两种技术之间,用于识别搜索空间的有希望的区域和映射到这些有前景区域的搜索的映射技术;从而快速找到全局最小值。使用我们的原型实施的实验表明,我们的方法有效地发现了从众所周知的基准获得的具有挑战性的函数的全局最小值的精确或非常接近的近似。我们的比较研究表明,我们的方法优于其他最先进的方法。

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