Automated Feature Identification in Web Applications.
Lecture Notes in Business Information Processing(2014)
摘要
Market-driven software intensive product development companies have been more and more experiencing the problem of feature expansion over time. Product managers face the challenge of identifying and locating the high value features in an application and weeding out the ones of low value from the next releases. Currently, there are few methods and tools that deal with feature identification and they address the problem only partially. Therefore, there is an urgent need of methods and tools that would enable systematic feature reduction to resolve issues resulting from feature creep. This paper presents an approach and an associated tool to automate feature identification for web applications. For empirical validation, a multiple case study was conducted using three well known web applications: Youtube, Google and BBC. The results indicate that there is a good potential for automating feature identification in web applications.
更多查看译文
关键词
feature creep,feature expansion,feature identification,feature reduction,feature location,feature monitoring,software bloat
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络