Zhang Junqi, Qiu Pengzhan, Zhou Mengchu
IEEE Trans Cybern. 2023 Sep;53(9):5403-5413. doi: 10.1109/TCYB.2021.3119591. Epub 2023 Aug 17.
Stochastic point location (SPL) involves a learning mechanism (LM) determining an optimal point on the line when the only inputs LM receives are stochastic information about the direction in which LM should move. The complexity of SPL comes from the stochastic responses of the environment, which may lead LM completely astray. SPL is a fundamental problem in optimization and was studied by many researchers during the last two decades, including improvement of its solution and all-pervasive applications. However, all existing SPL studies assume that the whole search space contains only one optimal point. Since a multimodal optimization problem (MMOP) contains multiple optimal solutions, it is significant to develop SPL's multimodal version. This article extends it from a unimodal problem to a multimodal one and proposes a parallel partition search (PPS) solution to address this issue. The heart of the proposed solution involves extracting the feature of the historical sampling information to distinguish the subintervals that contain the optimal points or not. Specifically, it divides the whole search space into multiple subintervals and samples them parallelly, then utilizes the feature of the historical sampling information to adjust the subintervals adaptively and to find the subintervals containing the optimal points. Finally, the optimal points are located within these subintervals according to their respective sampling statistics. The proof of the ϵ -optimal property for the proposed solution is presented. The numerical testing results demonstrate the power of the scheme.
随机点定位(SPL)涉及一种学习机制(LM),当LM接收到的唯一输入是关于其应移动方向的随机信息时,该机制会在线上确定一个最佳点。SPL的复杂性源于环境的随机响应,这可能会使LM完全误入歧途。SPL是优化中的一个基本问题,在过去二十年中受到了许多研究人员的关注,包括其解决方案的改进和广泛应用。然而,所有现有的SPL研究都假设整个搜索空间仅包含一个最佳点。由于多峰优化问题(MMOP)包含多个最优解,因此开发SPL的多峰版本具有重要意义。本文将其从单峰问题扩展到多峰问题,并提出了一种并行分区搜索(PPS)解决方案来解决此问题。所提出解决方案的核心涉及提取历史采样信息的特征,以区分包含或不包含最优解的子区间。具体而言,它将整个搜索空间划分为多个子区间并进行并行采样,然后利用历史采样信息的特征自适应地调整子区间,并找到包含最优解的子区间。最后,根据各自的采样统计信息在这些子区间内定位最优解。给出了所提出解决方案的ε-最优性证明。数值测试结果证明了该方案的有效性。