An empirical study for method level refactoring prediction by ensemble technique and SMOTE to improve its efficiency

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引用次数: 2

Abstract

Code refactoring is the modification of structure with out altering its functionality. The refactoring task is critical for enhancing the qualities for non-functional attributes, such as efficiency, understandability, reusability, and flexibility. Our research aims to build an optimized model for refactoring prediction at the method level with 7 ensemble techniques and verities of SMOTE techniques. This research has considered 5 open source java projects to investigate the accuracy of our anticipated model, which forecasts refactoring applicants by the use of ensemble techniques (BAG-KNN, BAG-DT, BAG-LOGR, ADABST, EXTC, RANF, GRDBST). Data imbalance issues are handled using 3 sampling techniques (SMOTE, BLSMOTE, SVSMOTE) to improve refactoring prediction efficiency and also focused all features and significant features. The mean accuracy of the classifiers like BAG- DT is 99.53% ,RANF is 99.55%, and EXTC is 99.59. The mean accuracy of the BLSMOTE is 97.21%. The performance of classifiers and sampling techniques are shown in terms of the box-plot diagram.
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基于集成技术和SMOTE的方法级重构预测的实证研究
代码重构是在不改变其功能的情况下对结构进行修改。重构任务对于增强非功能性属性的质量至关重要,例如效率、可理解性、可重用性和灵活性。我们的研究旨在利用7种集成技术和SMOTE技术的真实性,在方法层面构建重构预测的优化模型。本研究考虑了5个开源java项目来调查我们预期模型的准确性,该模型通过使用集成技术(BAG-KNN、BAG-DT、BAG-LOGR、ADABST、EXTC、RANF、GRDBST)来预测重构申请人。数据不平衡问题使用3种采样技术(SMOTE, BLSMOTE, SVSMOTE)来处理,以提高重构预测效率,并集中所有特征和重要特征。BAG- DT分类器的平均准确率为99.53%,RANF为99.55%,EXTC为99.59。BLSMOTE的平均准确率为97.21%。分类器和抽样技术的性能用箱线图表示。
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CiteScore
1.90
自引率
0.00%
发文量
16
期刊介绍: The International Journal of Open Source Software and Processes (IJOSSP) publishes high-quality peer-reviewed and original research articles on the large field of open source software and processes. This wide area entails many intriguing question and facets, including the special development process performed by a large number of geographically dispersed programmers, community issues like coordination and communication, motivations of the participants, and also economic and legal issues. Beyond this topic, open source software is an example of a highly distributed innovation process led by the users. Therefore, many aspects have relevance beyond the realm of software and its development. In this tradition, IJOSSP also publishes papers on these topics. IJOSSP is a multi-disciplinary outlet, and welcomes submissions from all relevant fields of research and applying a multitude of research approaches.
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