Parallel solving model for quantified boolean formula based on machine learning

被引:0
|
作者
Tao Li
Nan-feng Xiao
机构
[1] South China University of Technology,School of Computer Science and Engineering
[2] South China Agricultural University,Modern Education and Technology Center
来源
关键词
machine learning; quantified boolean formula; parallel solving; knowledge sharing; feature extraction; performance prediction;
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学科分类号
摘要
A new parallel architecture for quantified boolean formula (QBF) solving was proposed, and the prediction model based on machine learning technology was proposed for how sharing knowledge affects the solving performance in QBF parallel solving system, and the experimental evaluation scheme was also designed. It shows that the characterization factor of clause and cube influence the solving performance markedly in our experiment. At the same time, the heuristic machine learning algorithm was applied, support vector machine was chosen to predict the performance of QBF parallel solving system based on clause sharing and cube sharing. The relative error of accuracy for prediction can be controlled in a reasonable range of 20%–30%. The results show the important and complex role that knowledge sharing plays in any modern parallel solver. It shows that the parallel solver with machine learning reduces the quantity of knowledge sharing about 30% and saving computational resource but does not reduce the performance of solving system.
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页码:3156 / 3165
页数:9
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