Learning to Learn Evolutionary Algorithm : A Learnable Differential Evolution
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review
Author(s)
Related Research Unit(s)
Detail(s)
Original language | English |
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Journal / Publication | IEEE Transactions on Emerging Topics in Computational Intelligence |
Online published | 13 Mar 2023 |
Publication status | Online published - 13 Mar 2023 |
Link(s)
Abstract
Research on evolutionary optimization has flourished for several decades. Now it has come to a turning point. With the advancement of artificial intelligence, especially deep learning and reinforcement learning, it is becoming appealing to rethink the design and development of evolutionary algorithm (EA). From our perspective, a new-generation EA should be learned rather than manually designed, based on learning from optimization experiences (such as obtained from optimizing a family of optimization problems), the deep understanding of the roles of recombination operators, and the usage of experiences extracted through history optimization trajectories, so as to intelligently decide the control parameters that can adapt to the problem landscape changes. This learning can be conducted by strongly coupling with reinforcement learning since an evolutionary search procedure can be modeled as a Markov Decision Process (MDP). In this paper we propose a framework for automatic learning of EA, and present an exemplar study on learning a differential evolution (DE). Experimental results show that the learned adaptive DE is very competitive to some recent EAs on a commonly-used test suite, which indicates that the proposed learning framework has a great potential for the automatic design of promising EAs. © 2023 IEEE.
Research Area(s)
- Optimization, Statistics, Sociology, Neural networks, Trajectory, Search problems, Urban areas, Learning to learn evolutionary algorithm, differential evolution, mutation strategy, parameter control, deep reinforcement learning, PARAMETERS, STRATEGY, OPTIMIZATION, ADAPTATION, ENSEMBLE
Citation Format(s)
Learning to Learn Evolutionary Algorithm: A Learnable Differential Evolution. / Liu, Xin; Sun, Jianyong; Zhang, Qingfu et al.
In: IEEE Transactions on Emerging Topics in Computational Intelligence, 13.03.2023.
In: IEEE Transactions on Emerging Topics in Computational Intelligence, 13.03.2023.
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review