The intersection of evolutionary computation and machine learning has been receiving more and more attentions. On one hand, evolutionary computation methods can be applied to solve complicated optimization problems in machine learning, which have led to many encouraging outcomes, e.g., in neural architecture search, optimization of high-quality and diverse policies (known as quality-diversity) for reinforcement learning, and selection of a subset of individual learners for ensemble pruning. On the other hand, machine learning can be used to help configure and accelerate evolutionary computation methods, e.g., the use of reinforcement learning for dynamic algorithm configuration and the use of learning models for acquisition of good data points. We believe that the integration of evolutionary computation and machine learning will play a critical role in solving complex real-world tasks. There- fore, this special session aims to bring together the researchers working in all the aspects within the field of Evolutionary Learning and Learning to Optimize. Authors are invited to submit their original and unpublished work in the areas including, but not limited to:
Please follow the submission guideline from the IEEE WCCI 2024 Submission Website. Special session papers are treated the same as regular conference papers. Please specify that your paper is for the Special Session on Evolutionary Learning and Learning to Optimize . All papers accepted and presented at WCCI2024 will be included in the conference proceedings published by IEEE Explore, which are typically indexed by EI.
Dr. Peng Yang, Southern University of Science and Technology, China (yangp@sustech.edu.cn)
Dr. Peng Yang is a tenure-track assistant professor jointly in the Department of Statistics and Data Science and the Department of Computer Science and Engineering, Southern University of Science and Technology (SUSTech), China. He received his B.Sc. and Ph.D. degrees in the Department of Computer Science and Technology from University of Science and Technology of China in 2012 and 2017, respectively. From 2017 to 2018, he was a Senior Engineer in Huawei and then he joined SUSTech. His research interests include Evolutionary Computation, Reinforcement Learning, and Complex System Identification. He has published 38 papers in top journals and conferences like TEVC, TCYB, JSAC, TNNLS, TKDE, TASE and NeurIPS. He has also been authorized with 12 invention patents by China, USA, and Germany. He has served as the reviewer for top-tier journals (TEVC, TNNLS, TIE) and the PC member of top conferences (NeurIPS, ICLR, and ICML). He is a member of IEEE Computational Intelligence Society (CIS) Evolutionary Computation Technical Committee. He is an IEEE Senior Member.
Dr. Josu Ceberio, University of the Basque Country, Spain (josu.ceberio@ehu.eus)
Dr. Josu Ceberio is associate professor in the Department of Computer Science and Artificial Intelligence at the University of the Basque Country UPV/EHU. Since 2010, he has been a member of the Intelligent Systems Group where he obtained, in 2014, the Ph.D. in Computer Science. Most of his contributions have been in the field of estimation of distribution algorithms and combinatorial optimization, however, he has recently focused his research to the development of metaheuristic algorithms that incorporate reinforcement learning techniques to efficiently approach combinatorial optimization problems. Overall, Josu has published more than 54 research works in journals and international conferences in the area. He has also acted as a reviewer for more than 15 prestigious journals such as IEEE Trans. Computational Intelligence Magazine, IEEE Trans. Cybernetics and IEEE Trans. on Evo. Comp, and since 2022 is Associate Editor of the IEEE Trans. On Evolutionary Computation. Finally, it is worth mentioning having actively participated in organizing scientific events, the most notable being having acted as Proceedings Chair in the 2017 IEEE CEC, and in the 2020 ACM GECCO. He has also organized special session and workshops in IEEE CEC (2017, 2018, 2021) and ACM GECCO (2019, 2020) related to Evolutionary Computation for Permutation Problems. Currently, he is member of the IEEE CIS Taskforce on Evolutionary Scheduling and Combinatorial Optimization.
Dr. Chao Qian, Nanjing University, China (qianc@nju.edu.cn)
Dr. Chao Qian is an Associate Professor in the School of Artificial Intelligence, Nanjing University, China. He received the BSc and PhD degrees in the Department of Computer Science and Technology from Nanjing University. After finishing his PhD in 2015, he became an Associate Researcher in the School of Computer Science and Technology, University of Science and Technology of China, until 2019, when he returned to Nanjing University. His research interests include artificial intelligence, evolutionary computation and machine learning. He has published one book “Evolutionary Learning: Advances in Theories and Algorithms”, and over 50 papers in top-tier journals (AIJ, ECJ, TEvC, Algorithmica, TCS) and conferences (AAAI, IJCAI, NeurIPS, ICLR). He has won the ACM GECCO 2011 Best Theory Paper Award, the IDEAL 2016 Best Paper Award, and the IEEE CEC 2021 Best Student Paper Award Nomination. He is an associate editor of IEEE Transactions on Evolutionary Computation, a young associate editor of Science China Information Sciences, an editorial board member of the Memetic Computing journal, and was a guest editor of Theoretical Computer Science. He is a member of IEEE Computational Intelligence Society (CIS) Evolutionary Computation Technical Committee, and was the chair of IEEE CIS Task Force on Theoretical Foundations of Bio-inspired Computation. He has regularly given tutorials and co-chaired special sessions at leading evolutionary computation conferences (CEC, GECCO, PPSN), and has been invited to give an Early Career Spotlight Talk "Towards Theoretically Grounded Evolutionary Learning" at IJCAI 2022. He will be a Program Co-Chair of PRICAI 2025. He is a recipient of the National Science Foundation for Excellent Young Scholars (2020), and CCF-IEEE CS Young Computer Scientist Award (2023).