Software Defect Prediction Using Atomic Rule Mining and Random Forest

Suroj Thapa, A. Alsadoon, P. Prasad, Thair Al-Dala’in, Tarik A. Rashid
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引用次数: 2

Abstract

This research aims to improve software defect prediction in terms of accuracy and processing time. The new proposed algorithm is based on the Random Forest Algorithm that classifies and distributes the data based on tree module. It has value either 1 for defective module or 0 for the non-defective module. Random Forest Algorithm selects a feature from a subset of features which has been already classified. Random Forest Algorithm uses a number of trees for the prediction. For this research, datasets were tested with 10 and 15 sets of trees. Results showed an improvement in accuracy and processing time when the proposed system was used compared to the current solution for the software defect model generation and prediction. The proposed solution achieved an accuracy of 90.09% whereas processing time dropped by 54.14%. Processing time decreased from 19.78s to 9.07s during the prediction for over 100 records. Accuracy was improved from 89.97% to 90.09%. The proposed solution uses Atomic Rule Mining with Random Forest Algorithm for software defect prediction. It consists of classification and prediction process by using the Random Forest Algorithm during storing data that is carried out using Atomic Rule Mining.
基于原子规则挖掘和随机森林的软件缺陷预测
本研究旨在提高软件缺陷预测的准确性和处理时间。该算法是在随机森林算法的基础上,基于树形模块对数据进行分类和分布。有缺陷模块的值为1,无缺陷模块的值为0。随机森林算法从已经分类的特征子集中选择一个特征。随机森林算法使用大量的树进行预测。在这项研究中,数据集分别用10组和15组树进行了测试。结果表明,与当前软件缺陷模型生成和预测的解决方案相比,所提出的系统在准确性和处理时间上有所提高。提出的解决方案实现了90.09%的精度,而处理时间下降了54.14%。在预测超过100条记录时,处理时间从19.78秒减少到9.07秒。准确率由89.97%提高到90.09%。该方案采用原子规则挖掘和随机森林算法进行软件缺陷预测。它包括在存储数据过程中使用随机森林算法进行分类和预测,并使用原子规则挖掘进行预测。
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