Many real-world problems are usually computationally costly and the objective functions evolve over time. Data-driven, a.k.a. surrogate-assisted, evolutionary optimization has been recognized as an effective approach for tackling expensive black-box optimization problems in a static environment whereas it has rarely been studied under dynamic environments. This paper proposes a simple but effective transfer learning framework to empower data-driven evolutionary optimization to solve dynamic optimization problems. Specifically, it applies a hierarchical multi-output Gaussian process to capture the correlation between data collected from different time steps with a linearly increased number of hyperparameters. Furthermore, an adaptive source ...
Wang X, Jin Y, Schmitt S, Olhofer M. Transfer Learning Based Co-surrogate Assisted Evolutionary Bi-o...
Most evolutionary optimization algorithms assume that the evaluation of the objective and constraint...
Wang H, Jin Y, Yang C, Jiao L. Transfer stacking from low-to high-fidelity: A surrogate-assisted bi-...
Dynamic environments pose great challenges for expensive optimization problems, as the objective fun...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
Zhang X, Yu G, Jin Y, Qian F. An adaptive Gaussian process based manifold transfer learning to expen...
Wang X, Jin Y, Schmitt S, Olhofer M, Coello Coello CA. Transfer learning for gaussian process assist...
This paper draws motivation from the remarkable ability of humans to extract useful building-blocks ...
In the global optimization literature, traditional optimization algorithms typically start their sea...
Conventional evolutionary algorithms are not well suited for solving expensive optimization problems...
Wang X, Jin Y, Schmitt S, Olhofer M, Allmendinger R. Transfer learning based surrogate assisted evol...
In most real-world settings, designs are often gradually adapted and improved over time. Consequentl...
This paper proposes a Gaussian process (GP) based co-sub-Pareto front surrogate augmentation strateg...
Surrogate model assisted evolutionary algorithms (SAEAs) have recently attracted much attention due ...
Most evolutionary optimization algorithms assume that the evaluation of the objective and constrain...
Wang X, Jin Y, Schmitt S, Olhofer M. Transfer Learning Based Co-surrogate Assisted Evolutionary Bi-o...
Most evolutionary optimization algorithms assume that the evaluation of the objective and constraint...
Wang H, Jin Y, Yang C, Jiao L. Transfer stacking from low-to high-fidelity: A surrogate-assisted bi-...
Dynamic environments pose great challenges for expensive optimization problems, as the objective fun...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
Zhang X, Yu G, Jin Y, Qian F. An adaptive Gaussian process based manifold transfer learning to expen...
Wang X, Jin Y, Schmitt S, Olhofer M, Coello Coello CA. Transfer learning for gaussian process assist...
This paper draws motivation from the remarkable ability of humans to extract useful building-blocks ...
In the global optimization literature, traditional optimization algorithms typically start their sea...
Conventional evolutionary algorithms are not well suited for solving expensive optimization problems...
Wang X, Jin Y, Schmitt S, Olhofer M, Allmendinger R. Transfer learning based surrogate assisted evol...
In most real-world settings, designs are often gradually adapted and improved over time. Consequentl...
This paper proposes a Gaussian process (GP) based co-sub-Pareto front surrogate augmentation strateg...
Surrogate model assisted evolutionary algorithms (SAEAs) have recently attracted much attention due ...
Most evolutionary optimization algorithms assume that the evaluation of the objective and constrain...
Wang X, Jin Y, Schmitt S, Olhofer M. Transfer Learning Based Co-surrogate Assisted Evolutionary Bi-o...
Most evolutionary optimization algorithms assume that the evaluation of the objective and constraint...
Wang H, Jin Y, Yang C, Jiao L. Transfer stacking from low-to high-fidelity: A surrogate-assisted bi-...