将软件设计指标应用于开发者故事:监督机器学习分析

Asaad Algarni, Kenneth I. Magel
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引用次数: 1

摘要

面向对象分析是软件开发成功的重要一步。特别是,计划和管理阶段深深地依赖于将软件的复杂性和规模考虑在内的准确评估的交付。今天,由于敏捷在短时间内交付价值的能力和成本效率,一些软件行业正在将他们的开发方法转变为敏捷。然而,敏捷方法阻止了重量级的建模分析,并依赖于用户故事来驱动评估过程。因为用户故事是描述性语言,所以它们可能无法为实现提供清晰的图像。此外,它们可能无法帮助敏捷开发人员给出准确的估计,因为它们难以测量特性的复杂性和大小。因此,本文提出了一种新的敏捷构件,称为开发人员故事,它允许敏捷开发人员不仅分析和设计软件产品,而且还预测每个特性的大小,包括其复杂性。在本文中,一个案例研究展示了如何利用开发人员故事是预测一个特性的源代码大小及其复杂性的实用方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Software Design Metrics to Developer Story: A Supervised Machine Learning Analysis
Object-oriented analysis is a significant step that plays a vital role in the success of software development. The planning and management stages, in particular, profoundly rely on the deliverance of an accurate estimate that takes the software's complexity and size into consideration. Today, several software industries are transforming their development methodologies to Agile due to its ability to deliver value in a short time and its cost efficiency. However, Agile methods prevent heavyweight modeling analysis and depend on user stories to drive the estimation process. Because user stories are descriptive language, they may not provide a clear picture for the implementation. Also, they may not help Agile developers give an accurate estimation due to their difficulty in measuring the complexity and size of a feature. Thus, this paper presents a new Agile artifact called developer story that allows the Agile developer to not only analyze and design software products but also predict the size of each feature, including its complexity. In this paper, a case study is presented that shows how the utilization of developer story is a practical approach in predicting the source code size of a feature and its complexity.
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