求解大型优化问题的多智能体遗传算法

Yutong Zhang, Mingxing Zhou, Zhongzhou Jiang, Jing Liu
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引用次数: 26

摘要

随着大数据时代的到来,数据通常以TB甚至更大的量级出现。这些数据既包含有用的信息,也包含无用的信息。因此,迫切需要能够有效分析这些数据的技术。在实际应用中,独立分量分析(ICA)处理脑电图(EEG)信号近似于一个很大的优化问题,因为它要求信号处理的实时性,或者至少是自动化的。因此,在2015大数据优化大赛中,通过ICA处理脑电信号抽象出来的问题被建模为一个大优化问题(BigOpt)。进化优化技术已经成功地应用于解决各种优化问题,在大数据时代,进化优化技术越来越受到人们的关注。鉴于多智能体遗传算法(MAGA)在求解大规模优化问题方面表现出良好的性能,本文在MAGA框架的基础上,提出了一种求解大型优化问题的MAGA算法,并将其标记为MAGA- bigopt。在MAGA-BigOpt中,重新设计了竞争算子和自学习算子,并结合了交叉算子和变异算子,模拟了智能体的合作、竞争和学习行为。特别是在自学习算子中,智能体通过启发式策略快速找到递减方向来改进自身。在实验中,MAGA-BigOpt的性能在2015年大数据优化竞赛中给定的基准问题上得到验证,其中使用了带噪声和不带噪声的数据。结果表明,在这两种情况下,MAGA-BigOpt都优于竞争对手提供的基准算法,且计算成本更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-agent genetic algorithm for big optimization problems
With the coming of big data age, the data usually present in a huge magnitude such as TB or more. These data contain both useful and useless information. Therefore, techniques which can effectively analyze these data are in urgent demand. In practice, dealing with Electroencephalographic (EEG) signals with Independent Component Analysis (ICA) approximates to a big optimization problem because it requires real-time, or at least automatic in dealing with signals. Thus, in the Optimization of Big Data 2015 Competition, the problem abstracted from dealing with EEG signals through ICA is modeled as a big optimization problem (BigOpt). Evolutionary optimization techniques have been successfully used in solving various optimization problems, and in the age of big data, they have attracted increasing attentions. Since the multi-agent genetic algorithm (MAGA) shows a good performance in solving large-scale problems, in this paper, based on the framework of MAGA, an MAGA is proposed for solving the big optimization problem, which is labeled as MAGA-BigOpt. In MAGA-BigOpt, the competition and self-learning operators are redesigned and combined with crossover and mutation operators to simulate the cooperation, competition, and learning behaviors of agents. Especially, in the self-learning operator, agents quickly find decreasing directions to improve itself with a heuristic strategy. In the experiments, the performance of MAGA-BigOpt is validated on the given benchmark problems from the Optimization of Big Data 2015 Competition, where both the data with and without noise are used. The results show that MAGA-BigOpt outperforms the baseline algorithm provided by the competition in both cases with lower computational costs.
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