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Titlebook: Data-Driven Evolutionary Optimization; Integrating Evolutio Yaochu Jin,Handing Wang,Chaoli Sun Book 2021 The Editor(s) (if applicable) and

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Anthony Chun,Jeffrey D. Hoffmancquisition functions, also known as infill criteria, are introduced. An approach to surrogate-assisted evolutionary search of robust optimal solutions is presented. Finally, performance indicators for assessing the quality of surrogates for guiding evolutionary optimization are given.
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Introduction to Machine Learning,roblems, although learning and optimization focus on different types of problems. Finally, we emphasize that it can produce many synergies by integrating optimization and learning, e.g. using machine learning to assist optimization, and using optimization to automate machine learning.
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Introduction to Optimization,evaluating the quality of solutions and performance of optimization algorithms are described. A number of illustrative and real-world optimization problems are provided as examples in explaining the concepts and definitions.
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Data-Driven Surrogate-Assisted Evolutionary Optimization,cquisition functions, also known as infill criteria, are introduced. An approach to surrogate-assisted evolutionary search of robust optimal solutions is presented. Finally, performance indicators for assessing the quality of surrogates for guiding evolutionary optimization are given.
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Knowledge Transfer in Data-Driven Evolutionary Optimization,roach makes use of transfer learning with the help of parameter sharing and domain adaptation, to transfer knowledge between objectives or problems. Finally, transfer optimization, a variant of multi-tasking optimization, is employed to transfer knowledge between multi-fidelity formulation or multi-scenarios of the same optimization problem.
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1860-949X escription of most recent research advances in data-driven e.Intended for researchers and practitioners alike, this book covers carefully selected yet broad topics in optimization, machine learning, and metaheuristics. Written by world-leading academic researchers who are extremely experienced in in
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