Software Feature Model recommendations using data mining

Abdel Salam Sayyad, H. Ammar, T. Menzies
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引用次数: 8

Abstract

Feature Models are popular tools for describing software product lines. Analysis of feature models has traditionally focused on consistency checking (yielding a yes/no answer) and product selection assistance, interactive or offline. In this paper, we describe a novel approach to identify the most critical decisions in product selection/configuration by taking advantage of a large pool of randomly generated, generally inconsistent, product variants. Range Ranking, a data mining technique, is utilized to single out the most critical design choices, reducing the job of the human designer to making less consequential decisions. A large feature model is used as a case study; we show preliminary results of the new approach to illustrate its usefulness for practical product derivation.
软件特征模型建议使用数据挖掘
特性模型是描述软件产品线的常用工具。传统上,特征模型的分析主要集中在一致性检查(产生是/否答案)和产品选择辅助(交互式或离线)上。在本文中,我们描述了一种新的方法,通过利用大量随机生成的、通常不一致的产品变体,来识别产品选择/配置中最关键的决策。范围排名是一种数据挖掘技术,用于挑选出最关键的设计选择,减少人类设计师的工作,做出不那么重要的决策。采用大型特征模型作为案例研究;我们展示了新方法的初步结果,以说明它对实际产品推导的有用性。
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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