Impacts of Single-objective Landscapes on Multi-objective Optimization

Shoichiro Tanaka, K. Takadama, Hiroyuki Sato
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Abstract

This work revealed a relationship between a multi-objective optimization problem and single-objective optimization problems that exist in the multi-objective problem. This work focused on combinatorial problems and investigated the relations between the local optima networks of the single-objective problems and the Pareto optima network of the multi-objective problem. Each of their networks has a graph structure. We divided the entire network into subgraphs. Each subgraph was called a component and characterized by overlapping relations between the single-objective local optima networks and the multi-objective Pareto optima network. Results on multi-objective landscape problems showed that most Pareto optimal solutions were reachable from the single-objective local optimal solutions. This tendency was emphasized by increasing the number of objectives and the objective correlation. The number of co-variables impacted the number of cross-link relations between the single-objective local optima networks and the multi-objective Pareto optima network. The results suggested that searching for single-objective problems is a clue to multi-objective optimization.
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单目标景观对多目标优化的影响
本研究揭示了多目标优化问题中存在的多目标优化问题与单目标优化问题之间的关系。本文主要研究组合问题,研究了单目标问题的局部最优网络与多目标问题的帕累托最优网络之间的关系。他们的每个网络都有一个图结构。我们把整个网络分成子图。每个子图称为一个分量,其特征是单目标局部最优网络与多目标帕累托最优网络之间的重叠关系。多目标景观问题的结果表明,大多数Pareto最优解可以从单目标局部最优解到达。这种趋势是通过增加目标数量和客观相关性来强调的。协变量的数量影响单目标局部最优网络与多目标帕累托最优网络之间交联关系的数量。结果表明,单目标问题的搜索是多目标优化的线索。
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