Specification Mining Based on the Ordering Points to Identify the Clustering Structure Clustering Algorithm and Model Checking

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2024-01-10 DOI:10.3390/a17010028
Y. Fan, Meng Wang
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Abstract

Software specifications are of great importance to improve the quality of software. To automatically mine specifications from software systems, some specification mining approaches based on finite-state automatons have been proposed. However, these approaches are inaccurate when dealing with large-scale systems. In order to improve the accuracy of mined specifications, we propose a specification mining approach based on the ordering points to identify the clustering structure clustering algorithm and model checking. In the approach, the neural network model is first used to produce the feature values of states in the traces of the program. Then, according to the feature values, finite-state automatons are generated based on the ordering points to identify the clustering structure clustering algorithm. Further, the finite-state automaton with the highest F-measure is selected. To improve the quality of the finite-state automatons, we refine it based on model checking. The proposed approach was implemented in a tool named MCLSM and experiments, including 13 target classes, were conducted to evaluate its effectiveness. The experimental results show that the average F-measure of finite-state automatons generated by our method reaches 92.19%, which is higher than most related tools.
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基于排序点识别聚类结构的规范挖掘 聚类算法和模型检查
软件规范对提高软件质量非常重要。为了从软件系统中自动挖掘规范,人们提出了一些基于有限状态自动机的规范挖掘方法。然而,这些方法在处理大规模系统时并不准确。为了提高挖掘规范的准确性,我们提出了一种基于排序点识别聚类结构聚类算法和模型检查的规范挖掘方法。在该方法中,首先使用神经网络模型生成程序迹线中状态的特征值。然后,根据特征值,基于排序点生成有限状态自动机,以确定聚类结构聚类算法。然后,选择 F-measure 最高的有限状态自动机。为了提高有限状态自动机的质量,我们在模型检查的基础上对其进行了改进。我们在一个名为 MCLSM 的工具中实施了所提出的方法,并进行了包括 13 个目标类的实验,以评估其有效性。实验结果表明,我们的方法生成的有限状态自动机的平均 F-measure 达到 92.19%,高于大多数相关工具。
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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