In most real-world settings, designs are often gradually adapted and improved over time. Consequently, there exists knowledge from distinct (but possibly related) design exercises, which have either been previously completed or are currently in-progress, that may be leveraged to enhance the optimization performance of a particular target optimization task of interest. Further, it is observed that modern day design cycles are typically distributed in nature, and consist of multiple teams working on associated ideas in tandem. In such environments, vast amounts of related information can become available at various stages of the search process corresponding to some ongoing target optimization exercise. Successfully exploiting this knowledge i...
Increases in computational power have led to a growing interest in finding global rather than local ...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
Conventional evolutionary algorithms are not well suited for solving expensive optimization problems...
Liao P, Sun C, Zhang G, Jin Y. Multi-surrogate multi-tasking optimization of expensive problems. Kno...
It is a conventional wisdom that real world problems seldom occur in isolation. The motivation for t...
Computationally expensive multiobjective optimization problems arise, e.g. in many engineering appl...
In the global optimization literature, traditional optimization algorithms typically start their sea...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
Until recently, optimization was regarded as a discipline of rather theoretical interest, with limit...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
Wang X, Jin Y, Schmitt S, Olhofer M. An adaptive Bayesian approach to surrogate-assisted evolutionar...
Liu Q, Jin Y, Heiderich M, Rodemann T. Surrogate-assisted evolutionary optimization of expensive man...
Surrogate-assisted evolutionary algorithms have received a surge of attentions for their promising a...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Increases in computational power have led to a growing interest in finding global rather than local ...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
Conventional evolutionary algorithms are not well suited for solving expensive optimization problems...
Liao P, Sun C, Zhang G, Jin Y. Multi-surrogate multi-tasking optimization of expensive problems. Kno...
It is a conventional wisdom that real world problems seldom occur in isolation. The motivation for t...
Computationally expensive multiobjective optimization problems arise, e.g. in many engineering appl...
In the global optimization literature, traditional optimization algorithms typically start their sea...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
Wang H, Feng L, Jin Y, Doherty J. Surrogate-Assisted Evolutionary Multitasking for Expensive Minimax...
Until recently, optimization was regarded as a discipline of rather theoretical interest, with limit...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
Wang X, Jin Y, Schmitt S, Olhofer M. An adaptive Bayesian approach to surrogate-assisted evolutionar...
Liu Q, Jin Y, Heiderich M, Rodemann T. Surrogate-assisted evolutionary optimization of expensive man...
Surrogate-assisted evolutionary algorithms have received a surge of attentions for their promising a...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Increases in computational power have led to a growing interest in finding global rather than local ...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
Conventional evolutionary algorithms are not well suited for solving expensive optimization problems...