Cross Project Software Refactoring Prediction Using Optimized Deep Learning Neural Network with the Aid of Attribute Selection

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Abstract

Cross-project refactoring prediction is prominent research that comprises model training from one project database and testing it for a database under a separate project. While performing the refactoring process on the cross project, software programs want to be restructured by modifying or adding the source code. However, recognizing a piece of code for predicting refactoring purposes is remained to be actual challenge for software designers. To date the entire refactoring procedure is highly dependent on the skills and software inventers. In this manuscript, a deep learning model is utilized to introduce a predictive model for refactoring to highlight classes that need to be refactored. Specifically, the deep learning technique is utilized along with the proposed attribute selection phases to predict refactoring at the class level. The planned optimized deep learning-based method for cross-project refactoring prediction is experimentally conducted on open- source project and accuracy found as 0.9648 as comparison to other mentioned state of the art.
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基于属性选择的优化深度学习神经网络跨项目软件重构预测
跨项目重构预测是一项重要的研究,它包括从一个项目数据库中进行模型训练,并在一个单独项目下对另一个数据库进行测试。在跨项目中执行重构过程时,软件程序希望通过修改或添加源代码来进行重构。然而,识别一段代码以预测重构目的仍然是软件设计人员面临的实际挑战。迄今为止,整个重构过程高度依赖于技能和软件发明者。在本文中,我们利用深度学习模型引入了一个预测模型,用于重构,以突出需要重构的类。具体来说,深度学习技术与建议的属性选择阶段一起用于预测类级别的重构。基于深度学习的跨项目重构预测方法在开源项目上进行了实验,与其他现有方法相比,准确率为0.9648。
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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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