关于源代码设计问题的预测:一个系统映射研究

Q3 Engineering
R. Silva, Kleinner Silva Farias, Rafael Kunst
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引用次数: 0

摘要

背景:如今,对源代码设计问题的预测在软件开发行业发挥着至关重要的作用,提前识别有缺陷的体系结构模块。因此,在过去十年中,一些研究对这一主题进行了探索。研究人员和从业者通常需要对此类研究进行概述,考虑设计问题的预测因素、他们的主要贡献、使用的预测技术和研究方法。问题:然而,目前的文献仍然缺乏对已经发表的研究进行详细映射的研究。目的:因此,本文重点对当前的文献进行分类,并指出该研究领域值得研究的趋势和挑战。方法:根据公认的实用指南,设计并执行文献的系统映射。在对894项候选研究的语料库进行仔细筛选后,总共选择、分析和分类了35项主要研究,以回答6个研究问题。结果:主要结果是,大多数主要研究(1)探索了Bloater的臭味,(2)使用代码复杂性和大小作为预测因子,(3)应用机器学习技术生成预测,以及(4)在没有广泛经验评估的情况下提出了预测建议。结论:预测设计问题仍处于初级阶段,这表明未来的工作还有很大的空间。最后,这项研究可以作为研究界的一个起点
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the prediction of source code design problems: A systematic mapping study
Context: Nowadays, the prediction of source code design problems plays an essential role in the software development industry, identifying defective architectural modules in advance. For this reason, some studies explored this subject in the last decade. Researchers and practitioners often need to create an overview of such studies considering the predictors of design problems, their main contributions, the used prediction techniques and research methods. Problem: However, the current literature remains scarce of studies proposing a detailed mapping of studies already published. Objective: This article, therefore, focuses on classifying the current literature and pinpointing trends and challenges worth investigating in this research field. Method: A systematic mapping of the literature was designed and performed based on well-established practical guidelines. In total, 35 primary studies were selected, analyzed, and categorized after applying a careful filtering process from a corpus of 894 candidate studies to answer six research questions. Results: The main results are that a majority of the primary studies (1) explore Bloater bad smells, (2) use code complexity and size as predictors, (3) apply machine learning techniques to generate predictions, and (4) present a prediction proposal without an extensive empirical assessment. Conclusions: Predicting design problems is still in its infancy, showing that there is plenty of room for future work. Finally, this study can serve as a starting point for the research community
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来源期刊
Journal of Applied Research and Technology
Journal of Applied Research and Technology 工程技术-工程:电子与电气
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: The Journal of Applied Research and Technology (JART) is a bimonthly open access journal that publishes papers on innovative applications, development of new technologies and efficient solutions in engineering, computing and scientific research. JART publishes manuscripts describing original research, with significant results based on experimental, theoretical and numerical work. The journal does not charge for submission, processing, publication of manuscripts or for color reproduction of photographs. JART classifies research into the following main fields: -Material Science: Biomaterials, carbon, ceramics, composite, metals, polymers, thin films, functional materials and semiconductors. -Computer Science: Computer graphics and visualization, programming, human-computer interaction, neural networks, image processing and software engineering. -Industrial Engineering: Operations research, systems engineering, management science, complex systems and cybernetics applications and information technologies -Electronic Engineering: Solid-state physics, radio engineering, telecommunications, control systems, signal processing, power electronics, electronic devices and circuits and automation. -Instrumentation engineering and science: Measurement devices (pressure, temperature, flow, voltage, frequency etc.), precision engineering, medical devices, instrumentation for education (devices and software), sensor technology, mechatronics and robotics.
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