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Multi-Objective Optimization with Estimation of Distribution Algorithm in a Noisy Environment

机译:噪声环境下带有分布算法估计的多目标优化

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摘要

Many real-world optimization problems are subjected to uncertainties that may be characterized by the presence of noise in the objective functions. The estimation of distribution algorithm (EDA), which models the global distribution of the population for searching tasks, is one of the evolutionary computation techniques that deals with noisy information. This paper studies the potential of EDAs; particularly an EDA based on restricted Boltzmann machines that handles multi-objective optimization problems in a noisy environment. Noise is introduced to the objective functions in the form of a Gaussian distribution. In order to reduce the detrimental effect of noise, a likelihood correction feature is proposed to tune the marginal probability distribution of each decision variable. The EDA is subsequently hybridized with a particle swarm optimization algorithm in a discrete domain to improve its search ability. The effectiveness of the proposed algorithm is examined via eight benchmark instances with different characteristics and shapes of the Pareto optimal front. The scalability, hybridization, and computational time are rigorously studied. Comparative studies show that the proposed approach outperforms other state of the art algorithms.
机译:许多现实世界中的优化问题都存在不确定性,这些不确定性的特征可能是目标函数中存在噪声。分布估计算法(EDA)是一种用于搜索任务的总体人口分布模型,是处理嘈杂信息的一种进化计算技术之一。本文研究了EDA的潜力。特别是基于受限Boltzmann机的EDA,它可以处理嘈杂环境中的多目标优化问题。噪声以高斯分布的形式引入目标函数。为了减少噪声的有害影响,提出了一种似然校正功能来调整每个决策变量的边际概率分布。 EDA随后在离散域中与粒子群优化算法混​​合,以提高其搜索能力。通过八个具有不同特征和帕累托最优前沿形状的基准实例来检验所提出算法的有效性。严格研究了可伸缩性,混合和计算时间。比较研究表明,提出的方法优于其他现有技术的算法。

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