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首页> 外文期刊>Evolutionary Computation, IEEE Transactions on >Multiobjective Estimation of Distribution Algorithm Based on Joint Modeling of Objectives and Variables
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Multiobjective Estimation of Distribution Algorithm Based on Joint Modeling of Objectives and Variables

机译:基于目标和变量联合建模的分布算法多目标估计

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摘要

This paper proposes a new multiobjective estimation of distribution algorithm (EDA) based on joint probabilistic modeling of objectives and variables. This EDA uses the multidimensional Bayesian network as its probabilistic model. In this way, it can capture the dependencies between objectives, variables and objectives, as well as the dependencies learned between variables in other Bayesian network-based EDAs. This model leads to a problem decomposition that helps the proposed algorithm find better tradeoff solutions to the multiobjective problem. In addition to Pareto set approximation, the algorithm is also able to estimate the structure of the multiobjective problem. To apply the algorithm to many-objective problems, the algorithm includes four different ranking methods proposed in the literature for this purpose. The algorithm is first applied to the set of walking fish group problems, and its optimization performance is compared with a standard multiobjective evolutionary algorithm and another competitive multiobjective EDA. The experimental results show that on several of these problems, and for different objective space dimensions, the proposed algorithm performs significantly better and on some others achieves comparable results when compared with the other two algorithms. The algorithm is then tested on the set of CEC09 problems, where the results show that multiobjective optimization based on joint model estimation is able to obtain considerably better fronts for some of the problems compared with the search based on conventional genetic operators in the state-of-the-art multiobjective evolutionary algorithms.
机译:本文提出了一种基于目标和变量联合概率建模的新的多目标分布估计算法(EDA)。该EDA使用多维贝叶斯网络作为其概率模型。这样,它可以捕获目标,变量和目标之间的依存关系,以及其他基于贝叶斯网络的EDA中变量之间学习的依存关系。该模型导致问题分解,该问题分解有助于所提出的算法找到针对多目标问题的更好的折衷解决方案。除了帕累托集逼近外,该算法还能够估计多目标问题的结构。为了将该算法应用于多目标问题,该算法包括为此目的在文献中提出的四种不同的排名方法。该算法首先应用于步行鱼群问题集,并将其优化性能与标准多目标进化算法和另一种竞争性多目标EDA进行比较。实验结果表明,与其他两种算法相比,该算法在其中几个问题上以及在不同目标空间尺寸下的性能明显更好,在另一些问题上则达到了可比的结果。然后对该算法对一组CEC09问题进行了测试,结果表明,与基于传统遗传算子的搜索相比,基于联合模型估计的多目标优化能够针对某些问题获得明显更好的优势。先进的多目标进化算法。

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