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A Comprehensive Review of Machine Learning in Multi-objective Optimization

机译:多目标优化机器学习综述

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In the real world, it is challenging to calculate a trade-off alternative with traditional classical methods for complex non-linear systems, which always involve multiple conflicting objectives. Such complicated systems urgently desire advanced methods to conquer the multi-objective optimization problems (MOPs). As a promising AI method, the development and application of Machine Learning (ML) attract increasingly more attention from researchers. The natures of ML methods, such as parallel computation possibility, no need for any priori assumptions, etc., ensure the effectiveness and efficiency for solving MOPs. However, as we know, there is no literature related to the comprehensive review of ML in multi-objective optimization domain until now. This literature review aims to provide researchers a global view of mainstream ML methods for MOO in a general domain and a reference for applying ML methods to solve a specific type of MOPs. In this paper, the general ML mainstream methods are summarized, based on which the literature relating to ML on MOPs are retrieved in comprehensive domains. The relevant literature is categorized according to the emphasis of object types, purposes and methods, and the categorization results are finally analyzed and discussed.
机译:在现实世界中,通过对复杂的非线性系统进行传统古典方法计算权衡替代方面有挑战性,这始终涉及多个冲突目标。这种复杂的系统迫切需要先进的方法来征服多目标优化问题(MOPS)。作为一个有前途的AI方法,机器学习(ML)的开发和应用吸引了研究人员的更多关注。 ML方法的自然,例如并行计算的可能性,无需任何先验假设等,确保求解拖把的有效性和效率。然而,正如我们所知道的,没有与多目标优化域中ML的全面审查有关的文献,直到现在。该文献综述旨在为研究人员提供一般结构域中MOO主流ML方法的全球视图,以及应用ML方法解决特定类型的MOP的参考。在本文中,总结了一般ML主流方法,基于其在综合域中检索与ML上的ML相关的文献。相关文献根据对象类型,目的和方法的重点进行分类,最终分析并讨论分类结果。

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