Evolutionary Learning: Advances in Theories and Algorithms (PDF)
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Many machine learning tasks involve solving complex optimization problems, such as working on non-differentiable, non-continuous, and non-unique objective functions; in some cases it can prove difficult to even define an explicit objective function. Evolutionary learning applies evolutionary algorithms to address optimization problems in machine learning, and has yielded encouraging outcomes in many applications. However, due to the heuristic nature of evolutionary optimization, most outcomes to date have been empirical and lack theoretical support. This shortcoming has kept evolutionary learning from being well received in the machine learning community, which favors solid theoretical approaches.
Recently there have been considerable efforts to address this issue. This book presents a range of those efforts, divided into four parts. Part I briefly introduces readers to evolutionary learning and provides some preliminaries, while Part II presents general theoretical tools for the analysis of running time and approximation performance in evolutionary algorithms. Based on these general tools, Part III presents a number of theoretical findings on major factors in evolutionary optimization, such as recombination, representation, inaccurate fitness evaluation, and population. In closing, Part IV addresses the development of evolutionary learning algorithms with provable theoretical guarantees for several representative tasks, in which evolutionary learning offers excellent performance.
Yang Yu is an associate Professor of Nanjing University, China. His research interests are in artificial intelligence, including reinforcement learning, machine learning, and derivative-free optimization. He wasrecognized in "AI's 10 to Watch" by IEEE Intelligent Systems 2018, and received several awards/honors including the PAKDD Early Career Award, IJCAI'18 Early Career Spotlight talk, National Outstanding Doctoral Dissertation Award, China Computer Federation Outstanding Doctoral Dissertation Award, PAKDD'08 Best Paper Award, GECCO'11 Best Paper (Theory Track), etc. He is a Junior Associate Editor of Frontiers of Computer Science, and an Area Chair of ACML'17, IJCAI'18, and ICPR'18.
Chao Qian is an associate Researcher of University of Science and Technology of China, China. His research interests are in artificial intelligence, evolutionary computation and machine learning. He has published over 20 papers in leading international journals and conference proceedings, including Artificial Intelligence, Evolutionary Computation, IEEE Transactions on Evolutionary Computation, Algorithmica, NIPS, IJCAI, AAAI, etc. He has won the ACM GECCO 2011 Best Paper Award (Theory Track) and the IDEAL 2016 Best Paper
- Autoren: Zhi-Hua Zhou , Yang Yu , Chao Qian
- 2019, 1st ed. 2019, 361 Seiten, Englisch
- Verlag: Springer-Verlag GmbH
- ISBN-10: 9811359563
- ISBN-13: 9789811359569
- Erscheinungsdatum: 22.05.2019
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