In solving many real-world optimization problems, neither mathematical functions nor numerical simulations are available for evaluating the quality of candidate solutions. Instead, surrogate models must be built based on historical data to approximate the objective functions and no new data will be available during the optimization process. Such problems are known as offline data-driven optimization problems. Since the surrogate models solely depend on the given historical data, the optimization algorithm is able to search only in a very limited decision space during offline data-driven optimization. This paper proposes a new offline data-driven evolutionary algorithm to make the full use of the offline data to guide the search. ...
We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial opt...
We present a parallel evolutionary optimization algorithm that leverages surrogate models for solvin...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
In solving many real-world optimization problems, neither mathematical functions nor numerical simul...
Huang P, Wang H, Jin Y. Offline data-driven evolutionary optimization based on tri-training. Swarm a...
Liu Z, Wang H, Jin Y. Performance Indicator-Based Adaptive Model Selection for Offline Data-Driven M...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
In offline data-driven multiobjective optimization, no new data is available during the optimization...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Function evaluations of many real-world optimization problems are time or resource consuming, posin...
Wang X, Jin Y, Schmitt S, Olhofer M. An adaptive Bayesian approach to surrogate-assisted evolutionar...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
We present a parallel evolutionary optimization algorithm that leverages surrogate models for solvin...
We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial opt...
We present a parallel evolutionary optimization algorithm that leverages surrogate models for solvin...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
In solving many real-world optimization problems, neither mathematical functions nor numerical simul...
Huang P, Wang H, Jin Y. Offline data-driven evolutionary optimization based on tri-training. Swarm a...
Liu Z, Wang H, Jin Y. Performance Indicator-Based Adaptive Model Selection for Offline Data-Driven M...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
In offline data-driven multiobjective optimization, no new data is available during the optimization...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Function evaluations of many real-world optimization problems are time or resource consuming, posin...
Wang X, Jin Y, Schmitt S, Olhofer M. An adaptive Bayesian approach to surrogate-assisted evolutionar...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
We present a parallel evolutionary optimization algorithm that leverages surrogate models for solvin...
We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial opt...
We present a parallel evolutionary optimization algorithm that leverages surrogate models for solvin...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...