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An Ensemble Indicator-Based Density Estimator for Evolutionary Multi-objective Optimization

机译:基于集合指标的密度估计的进化多目标优化

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Ensemble learning is one of the most employed methods in machine learning. Its main ground is the construction of stronger mechanisms based on the combination of elementary ones. In this paper, we employ AdaBoost, which is one of the most well-known ensemble methods, to generate an ensemble indicator-based density estimator for multi-objective optimization. It combines the search properties of five density estimators, based on the hypervolume, R2, IGD~+, ∈~+, and △_p quality indicators. Through the multi-objective evolutionary search process, the proposed ensemble mechanism adapts itself using a learning process that takes the preferences of the underlying quality indicators into account. The proposed method gives rise to the ensemble indicator-based multi-objective evolutionary algorithm (EIB-MOEA) that shows a robust performance on different multi-objective optimization problems when compared with respect to several existing indicator-based multi-objective evolutionary algorithms.
机译:集成学习是机器学习中使用最广泛的方法之一。它的主要基础是在基础机制的基础上构建更强大的机制。在本文中,我们采用最著名的集成方法之一AdaBoost来生成基于集成指标的密度估计器,以进行多目标优化。它基于超体积,R2,IGD〜+,∈〜+和△_p质量指标,结合了五个密度估计器的搜索属性。通过多目标进化搜索过程,所提出的集成机制通过使用学习过程进行自我调整,该学习过程将基础质量指标的偏好考虑在内。所提出的方法产生了基于集合指标的多目标进化算法(EIB-MOEA),与几种现有的基于指标的多目标进化算法相比,该算法在不同的多目标优化问题上表现出了强大的性能。

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