Predict the success or failure of an evolutionary algorithm run

Gopinath Chennupati, C. Ryan, R. Azad
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引用次数: 2

Abstract

The quality of candidate solutions in evolutionary computation (EC) depend on multiple independent runs and a large number of them fail to guarantee optimal result. These runs consume more or less equal or sometimes higher amount of computational resources on par the runs that produce desirable results. This research work addresses these two issues (run quality, execution time), Run Prediction Model (RPM), in which undesirable quality evolutionary runs are identified to discontinue from their execution. An Ant Colony Optimization (ACO) based classifier that learns to discover a prediction model from the early generations of an EC run. We consider Grammatical Evolution (GE) as our EC technique to apply RPM that is evaluated on four symbolic regression problems. We establish that the RPM applied GE produces a significant improvement in the success rate while reducing the execution time.
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预测进化算法运行的成功或失败
在进化计算中,候选解的质量依赖于多次独立的运行,大量的候选解不能保证最优结果。与产生理想结果的运行相比,这些运行消耗的计算资源或多或少相等,有时甚至更高。这项研究工作解决了这两个问题(运行质量,执行时间),运行预测模型(RPM),在该模型中,不期望的质量进化运行被确定为停止执行。基于蚁群优化(ACO)的分类器,该分类器从EC运行的早期几代中学习发现预测模型。我们认为语法进化(GE)作为我们的EC技术来应用RPM,在四个符号回归问题上进行评估。我们确定应用GE的RPM在减少执行时间的同时显著提高了成功率。
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