最优化问题
多目标优化
计算机科学
进化计算
进化算法
工程优化
优化测试函数
连续优化
帝国主义竞争算法
元启发式
人工智能
多群优化
数学优化
机器学习
数学
算法
作者
Yaochu Jin,Handing Wang,Tinkle Chugh,Dan Guo,Kaisa Miettinen
标识
DOI:10.1109/tevc.2018.2869001
摘要
Most evolutionary optimization algorithms assume that the evaluation of the objective and constraint functions is straightforward. In solving many real-world optimization problems, however, such objective functions may not exist. Instead, computationally expensive numerical simulations or costly physical experiments must be performed for fitness evaluations. In more extreme cases, only historical data are available for performing optimization and no new data can be generated during optimization. Solving evolutionary optimization problems driven by data collected in simulations, physical experiments, production processes, or daily life are termed data-driven evolutionary optimization. In this paper, we provide a taxonomy of different data driven evolutionary optimization problems, discuss main challenges in data-driven evolutionary optimization with respect to the nature and amount of data, and the availability of new data during optimization. Real-world application examples are given to illustrate different model management strategies for different categories of data-driven optimization problems.
科研通智能强力驱动
Strongly Powered by AbleSci AI