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Multi~3: Optimizing Multimodal Single-Objective Continuous Problems in the Multi-objective Space by Means of Multiobjectivization

机译:多〜3:通过多目标化优化多目标空间中的多模式单目标持续问题

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In this work we examine the inner mechanisms of the recently developed sophisticated local search procedure SOMOGSA. This method solves multimodal single-objective continuous optimization problems by first expanding the problem with an additional objective (e.g., a sphere function) to the bi-objective space, and subsequently exploiting local structures and ridges of the resulting landscapes. Our study particularly focusses on the sensitivity of this multiobjectivization approach w.r.t. (ⅰ) the parametrization of the artificial second objective, as well as (ⅱ) the position of the initial starting points in the search space. As SOMOGSA is a modular framework for encapsulating local search, we integrate Gradient and Nelder-Mead local search (as optimizers in the respective module) and compare the performance of the resulting hybrid local search to their original single-objective counterparts. We show that the SOMOGSA framework can significantly boost local search by multiobjectivization. Combined with more sophisticated local search and metaheuristics this may help in solving highly multimodal optimization problems in future.
机译:在这项工作中,我们检查最近开发的复杂的本地搜索程序Somogsa的内部机制。该方法通过首先扩展到双目标空间的附加目标(例如,球体功能)来解决多模式单目标连续优化问题,以及随后利用所产生的景观的局部结构和脊。我们的研究特别关注这种多目标激活方法的敏感性W.R.T. (Ⅰ)人工第二目标的参数化,以及(Ⅱ)搜索空间中初始起点的位置。由于Somogsa是一种用于封装本地搜索的模块化框架,我们将梯度和NELDER-MEAD本地搜索(在各个模块中为优化器集成),并将结果混合本地搜索的性能与原始单目标对应物进行比较。我们展示了Somogsa框架可以通过多目标化提高本地搜索。结合更复杂的本地搜索和美术学,可能有助于在将来解决高度多峰优化问题。

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