Machine Learning Implementation for Refactoring Prediction

Rasmita Panigrahi, S. K. Kuanar, L. Kumar
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Abstract

Refactorings improve the internal organization of object-oriented software project without altering the functionality to address the problem of architectural degradation. The application of refactoring leads to increased software quality and maintainability. However, finding refactoring chances is a complex topic that affects both developers and researchers. In a recent study, machine learning methods demonstrated significant promise for resolving this issue. Model refactoring prevents erosion of the program architecture at an early stage of the model-driven engineering paradigm-compliant software development project. However, difficulties such as variable data set distribution and the availability of duplicate and irrelevant variables hamper the efficacy of refactoring prediction models. We aim to develop a model for refactoring prediction using several machine learning classifiers, data sampling techniques, and feature selection techniques.
重构预测的机器学习实现
重构改进了面向对象软件项目的内部组织,而不改变解决体系结构退化问题的功能。重构的应用可以提高软件质量和可维护性。然而,寻找重构机会是一个复杂的话题,对开发人员和研究人员都有影响。在最近的一项研究中,机器学习方法显示出解决这个问题的重大希望。在模型驱动的工程范式兼容的软件开发项目的早期阶段,模型重构可以防止对程序体系结构的侵蚀。然而,诸如变量数据集分布和重复变量和不相关变量的可用性等困难阻碍了重构预测模型的有效性。我们的目标是使用几种机器学习分类器、数据采样技术和特征选择技术开发一个重构预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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