Formerly, multi-criteria optimization algorithms were often tested using tens of thousands function evaluations. In many real-world settings function evaluations are very costly or the available budget is very limited. Several methods were developed to solve these cost-extensive multi-criteria optimization problems by reducing the number of function evaluations by means of surrogate optimization. In this study, we apply different multi-criteria surrogate optimization methods to improve (tune) an event-detection software for water-quality monitoring. For tuning two important parameters of this software, four state-of-the-art methods are compared: S-Metric-Selection Efficient Global Optimization (SMS-EGO), S-Metric-Expected Improvement for Ef...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
We propose a hybridization approach called Regularized-Surrogate- Optimization (RSO) aimed at overco...
Integrating data-driven surrogate models and simulation models of different accuracies (or fidelitie...
Formerly, multi-criteria optimization algorithms were often tested using tens of thousands function ...
Qin S, Sun C, Liu Q, Jin Y. A Performance Indicator Based Infill Criterion for Expensive Multi-/Many...
Multi-criteria optimization has gained increasing attention during the last decades. This article ex...
Complex environmental optimization problems often require computationally expensive simulation model...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
International audienceCommonly, when developing an algorithm it is necessary to define a certain num...
This thesis introduces efficient algorithms for multi-objective optimization of computationally expe...
This dissertation presents a new multiple objective optimization algorithm that is capable of solvin...
International audienceThe performance of surrogate-based optimization is highly affected by how the ...
Liao P, Sun C, Zhang G, Jin Y. Multi-surrogate multi-tasking optimization of expensive problems. Kno...
Liu Z, Wang H, Jin Y. Performance Indicator-Based Adaptive Model Selection for Offline Data-Driven M...
This Thesis develops a new multi-objective heuristic algorithm. The optimum searching task is perfor...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
We propose a hybridization approach called Regularized-Surrogate- Optimization (RSO) aimed at overco...
Integrating data-driven surrogate models and simulation models of different accuracies (or fidelitie...
Formerly, multi-criteria optimization algorithms were often tested using tens of thousands function ...
Qin S, Sun C, Liu Q, Jin Y. A Performance Indicator Based Infill Criterion for Expensive Multi-/Many...
Multi-criteria optimization has gained increasing attention during the last decades. This article ex...
Complex environmental optimization problems often require computationally expensive simulation model...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
International audienceCommonly, when developing an algorithm it is necessary to define a certain num...
This thesis introduces efficient algorithms for multi-objective optimization of computationally expe...
This dissertation presents a new multiple objective optimization algorithm that is capable of solvin...
International audienceThe performance of surrogate-based optimization is highly affected by how the ...
Liao P, Sun C, Zhang G, Jin Y. Multi-surrogate multi-tasking optimization of expensive problems. Kno...
Liu Z, Wang H, Jin Y. Performance Indicator-Based Adaptive Model Selection for Offline Data-Driven M...
This Thesis develops a new multi-objective heuristic algorithm. The optimum searching task is perfor...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
We propose a hybridization approach called Regularized-Surrogate- Optimization (RSO) aimed at overco...
Integrating data-driven surrogate models and simulation models of different accuracies (or fidelitie...