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Guaranteeing the probability of success using repeated runs of genetic algorithm

机译:使用遗传算法的重复运行来保证成功的可能性

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Though genetic algorithm (GA) has found widespread application, there appears to be no guarantee of success or quantitative measure of the probability of success in a given application. This paper addresses this problem using the notion of repeatedly applying a GA. Several alternative interpretations of the algorithm are offered. The Q factor is introduced to characterize the efficacy of any GA. The repeated algorithm is applied to a six-degree object detection problem and experimental results are reported. A general methodology is given on the design of GA in a particular problem based on defining the maximum variation of a problem, using the training set to estimate the average probability of a single run to the desired level of statistical confidence, and using the testing set to verify the required performance. This paper paves the way for applying the GA to robust industrial applications for which the probability of convergence to the globally correct solution is required to be arbitrarily high.
机译:尽管遗传算法(GA)已发现了广泛的应用,但似乎无法保证成功或对给定应用中成功概率的定量度量。本文使用重复应用GA的概念解决了这个问题。提供了该算法的几种替代解释。引入Q因子来表征任何GA的功效。将该算法应用于六度目标检测问题,并报告了实验结果。基于定义问题的最大变化,使用训练集估计单次运行的平均概率达到所需的统计置信度以及使用测试集,针对特定问题的遗传算法的设计给出了一种通用方法。验证所需的性能。本文为将遗传算法应用于稳健的工业应用铺平了道路,对于这些应用,要求收敛到全局正确解的概率必须很高。

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