Exploring the Explainable Aspects and Performance of a Learnable Evolutionary Multiobjective Optimization Method

Giovanni Misitano
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Abstract

Multiobjective optimization problems have multiple conflicting objective functions to be optimized simultaneously. The solutions to these problems are known as Pareto optimal solutions, which are mathematically incomparable. Thus, a decision maker must be employed to provide preferences to find the most preferred solution. However, decision makers often lack support in providing preferences and insights in exploring the solutions available. We explore the combination of learnable evolutionary models with interactive indicator-based evolutionary multiobjective optimization to create a learnable evolutionary multiobjective optimization method. Furthermore, we leverage interpretable machine learning to provide decision makers with potential insights about the problem being solved in the form of rule-based explanations. In fact, we show that a learnable evolutionary multiobjective optimization method can offer advantages in the search for solutions to a multiobjective optimization problem. We also provide an open source software framework for other researchers to implement and explore our ideas in their own works. Our work is a step towards establishing a new paradigm in the field on multiobjective optimization: explainable and learnable multiobjective optimization . We take the first steps towards this new research direction and provide other researchers and practitioners with necessary tools and ideas to further contribute to this field.
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探索一种可学习的进化多目标优化方法的可解释方面和性能
多目标优化问题有多个相互冲突的目标函数需要同时优化。这些问题的解被称为帕累托最优解,在数学上是无可比拟的。因此,必须雇用决策者来提供偏好,以找到最受欢迎的解决方案。然而,决策者在探索可用的解决方案时往往缺乏提供偏好和见解的支持。将可学习的进化模型与基于交互指标的进化多目标优化相结合,建立了一种可学习的进化多目标优化方法。此外,我们利用可解释的机器学习,以基于规则的解释的形式为决策者提供关于正在解决的问题的潜在见解。事实上,我们证明了一种可学习的进化多目标优化方法在寻找多目标优化问题的解方面具有优势。我们还提供了一个开源软件框架,供其他研究人员在他们自己的作品中实现和探索我们的想法。我们的工作是朝着在多目标优化领域建立一个新的范式迈出的一步:可解释和可学习的多目标优化。我们向这个新的研究方向迈出了第一步,并为其他研究人员和从业者提供了必要的工具和想法,以进一步为这一领域做出贡献。
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Evolutionary Seeding of Diverse Structural Design Solutions via Topology Optimization The Influence of Noise on Multi-Parent Crossover for an Island Model Genetic Algorithm Model-based Gradient Search for Permutation Problems Exploring the Explainable Aspects and Performance of a Learnable Evolutionary Multiobjective Optimization Method Editorial to the “Evolutionary Reinforcement Learning” Special Issue
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