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A data mining approach to evolutionary optimisation of noisy multi-objective problems

机译:噪声多目标问题进化优化的数据挖掘方法

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摘要

Many real world optimisation problems have opposing objective functions which are subjected to the influence of noise. Noise in the objective functions can adversely affect the stability, performance and convergence of evolutionary optimisers. This article proposes a Bayesian frequent data mining (DM) approach to identify optimal regions to guide the population amidst the presence of noise. The aggregated information provided by all the solutions helped to average out the effects of noise. This article proposes a DM crossover operator to make use of the rules mined. After implementation of this operator, a better convergence to the true Pareto front is achieved at the expense of the diversity of the solution. Consequently, an ExtremalExploration operator will be proposed in the later part of this article to help curb the loss in diversity caused by the DM operator. The result is a more directive search with a faster convergence rate. The search is effective in decision space where the Pareto set is in a tight cluster. A further investigation of the performance of the proposed algorithm in noisy and noiseless environment will also be studied with respect to non-convexity, discontinuity, multi-modality and uniformity. The proposed algorithm is evaluated on ZDT and other benchmarks problems. The results of the simulations indicate that the proposed method is effective in handling noise and is competitive against the other noise tolerant algorithms.
机译:许多现实世界中的优化问题都有相反的目标函数,这些目标函数会受到噪声的影响。目标函数中的噪声可能会对演化优化器的稳定性,性能和收敛性产生不利影响。本文提出了一种贝叶斯频繁数据挖掘(DM)方法,以识别最佳区域以在存在噪声的情况下指导种群。所有解决方案提供的汇总信息有助于平均化噪声的影响。本文提出了DM跨界算子,以利用挖掘的规则。在实施该算子之后,以解决方案的多样性为代价,可以更好地收敛到真实的帕累托前沿。因此,本文的后半部分将提出一个ExtremalExploration运算符,以帮助抑制DM运算符导致的多样性损失。结果是具有更快收敛速度​​的更有针对性的搜索。该搜索在帕累托集位于紧密簇中的决策空间中有效。还将针对非凸性,不连续性,多模态和均匀性研究在噪声和无噪声环境中所提出算法的性能的进一步研究。该算法针对ZDT和其他基准测试问题进行了评估。仿真结果表明,该方法在噪声处理方面是有效的,并且与其他噪声容忍算法相比具有竞争力。

著录项

  • 来源
    《International journal of systems science》 |2012年第9期|p.1217-1247|共31页
  • 作者单位

    Department of Electrical and Computer Engineering, National University of Singapore,4 Engineering Drive 3, Singapore SI 17576, Singapore;

    Rolls Royce Singapore Pte Ltd,50 Nanyand Avenue, Singapore 639798, Singapore;

    Department of Electrical and Computer Engineering, National University of Singapore,4 Engineering Drive 3, Singapore SI 17576, Singapore;

    Department of Electrical and Computer Engineering, National University of Singapore,4 Engineering Drive 3, Singapore SI 17576, Singapore;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    data mining; evolutionary computations; multi-objective optimisation; noise;

    机译:数据挖掘;进化计算;多目标优化;噪声;

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