Learning to optimize: reference vector reinforcement learning adaption to constrained many-objective optimization of industrial copper burdening system

L Ma, N Li, Y Guo, X Wang, S Yang… - IEEE Transactions …, 2021 - ieeexplore.ieee.org
The performance of decomposition-based algorithms is sensitive to the Pareto front shapes
since their reference vectors preset in advance are not always adaptable to various problem …

Review of the research landscape of multi-criteria evaluation and benchmarking processes for many-objective optimization methods: coherent taxonomy, challenges …

RT Mohammed, R Yaakob, AA Zaidan… - … Journal of Information …, 2020 - World Scientific
Evaluation and benchmarking of many-objective optimization (MaOO) methods are
complicated. The rapid development of new optimization algorithms for solving problems …

Integrating quality and safety in construction scheduling time-cost trade-off model

A Panwar, KN Jha - Journal of Construction Engineering and …, 2021 - ascelibrary.org
Quality and safety are important and are the leading concerns in a construction project.
Planning a project without properly incorporating these two performance parameters …

A many-objective optimization model for construction scheduling

A Panwar, KN Jha - Construction management and economics, 2019 - Taylor & Francis
In recent years, the number of stakeholders of construction projects has significantly
increased; this has required the simultaneous achievement of competing objectives, such as …

A knee-point-based evolutionary algorithm using weighted subpopulation for many-objective optimization

J Zou, C Ji, S Yang, Y Zhang, J Zheng, K Li - Swarm and Evolutionary …, 2019 - Elsevier
Among many-objective optimization problems (MaOPs), the proportion of nondominated
solutions is too large to distinguish among different solutions, which is a great obstacle in the …

Approximating complex Pareto fronts with predefined normal-boundary intersection directions

M Elarbi, S Bechikh, CAC Coello… - IEEE Transactions …, 2019 - ieeexplore.ieee.org
Decomposition-based evolutionary algorithms using predefined reference points have
shown good performance in many-objective optimization. Unfortunately, almost all …

A novel multi-objective immune algorithm with a decomposition-based clonal selection

L Li, Q Lin, S Liu, D Gong, CAC Coello, Z Ming - Applied Soft Computing, 2019 - Elsevier
In recent years, a number of multi-objective immune algorithms (MOIAs) have been
proposed as inspired by the information processing in biologic immune system. Since most …

Robust graph neural networks via ensemble learning

Q Lin, S Yu, K Sun, W Zhao, O Alfarraj, A Tolba, F Xia - Mathematics, 2022 - mdpi.com
Graph neural networks (GNNs) have demonstrated a remarkable ability in the task of semi-
supervised node classification. However, most existing GNNs suffer from the nonrobustness …

A new evolutionary optimization based on multi-objective firefly algorithm for mining numerical association rules

B Rokh, H Mirvaziri, MH Olyaee - Soft Computing, 2024 - Springer
Association rule mining (ARM) is a widely used technique in data mining for pattern
discovery. However, association rule mining in numerical data poses a considerable …

Cooperative-competitive two-stage game mechanism assisted many-objective evolutionary algorithm

Z Zhang, H Wang, W Zhang, Z Cui - Information Sciences, 2023 - Elsevier
It is critical to maintain significant convergence and diversity in many-objective optimization
problems (MaOPs) for the performance of many-objective evolutionary algorithms …