Requirements prioritization based on multiple criteria using Artificial Intelligence techniques

María Isabel Limaylla Lunarejo
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引用次数: 1

Abstract

Traditional methods for requirements prioritization (RP) are currently limited by scalability and lack of automation issues. In recent years, there has been an exponential growth in the use of Artificial Intelligence (AI) techniques in different areas of software engineering (e.g., requirements analysis, testing, maintenance). In particular, I have found thirteen RP methods applying AI techniques such as machine learning, or genetic algorithms. 38% of these approaches seek to improve the scalability problem, whereas only 15% of them aim to improve the automation aspect along the RP process. Moreover, all these studies have carried out their evaluations with a number of requirements no greater than 100.In order to address the issues of scalability and lack of automation in RP, the present research project aims to propose a semi-automatic multiple-criteria prioritization method for functional and non-functional requirements of software projects developed within the Software Product-Lines paradigm. The proposed RP method will be based on the combination of Natural Language Processing techniques and Machine Learning algorithms, and for its validation, empirical studies will be carried out with real web-based geographic information systems (GIS). This paper describes the problem and technical challenges to be addressed, the related works, as well as the main contributions of the proposed solution.
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基于使用人工智能技术的多个标准的需求优先级
传统的需求优先排序(RP)方法目前受到可伸缩性和缺乏自动化问题的限制。近年来,在软件工程的不同领域(例如,需求分析、测试、维护)中,人工智能(AI)技术的使用呈指数级增长。特别是,我发现了13种RP方法,这些方法应用了机器学习或遗传算法等人工智能技术。这些方法中有38%试图改善可伸缩性问题,而只有15%的方法旨在改善RP过程中的自动化方面。此外,所有这些研究都进行了评价,所需经费不超过100项。为了解决RP中可扩展性和缺乏自动化的问题,目前的研究项目旨在提出一种半自动的多标准优先级方法,用于在软件产品线范例中开发的软件项目的功能和非功能需求。提出的RP方法将基于自然语言处理技术和机器学习算法的结合,并且为了验证其有效性,将在真实的基于web的地理信息系统(GIS)中进行实证研究。本文描述了要解决的问题和技术挑战,相关工作,以及提出的解决方案的主要贡献。
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