Title :
Early failure prediction in feature request management systems
Author :
Fitzgerald, Camilo ; Letier, Emmanuel ; Finkelstein, Anthony
Author_Institution :
Dept. of Comput. Sci., Univ. Coll. London, London, UK
fDate :
Aug. 29 2011-Sept. 2 2011
Abstract :
Online feature request management systems are popular tools for gathering stakeholder requirements during system evolution. Deciding which feature requests require attention and how much upfront analysis to perform on them is an important problem in this context: too little upfront analysis may result in inadequate functionalities being developed, costly changes, and wasted development effort; too much upfront analysis is a waste of time and resources. Early predictions about which feature requests are most likely to fail due to insufficient or inadequate upfront analysis could facilitate such decisions. Our objective is to study whether it is possible to make such predictions automatically from the characteristics of the online discussions on feature requests. The paper presents a tool-implemented framework that automatically constructs failure prediction models using machine-learning classification algorithms and compares the performance of the different techniques for the Firefox and Netbeans projects. The comparison relies on a cost-benefit model for assessing the value of additional upfront analysis. In this model, the value of additional upfront analysis depends on its probability of success in preventing failures and on the relative cost of the failures it prevents compared to its own cost. We show that for reasonable estimations of these two parameters automated prediction models provide more value than a set of baselines for some failure types and projects. This suggests that automated failure prediction during online requirements elicitation may be a promising approach for guiding requirements engineering efforts in online settings.
Keywords :
formal verification; learning (artificial intelligence); pattern classification; cost-benefit model; early failure prediction; machine-learning classification algorithms; online feature request management systems; requirements engineering; Analytical models; Educational institutions; Feature extraction; Fires; Mathematical model; Predictive models; Cost-benefit of requirements engineering; Early failure prediction; Feature requests management systems; Global software development; Open source;
Conference_Titel :
Requirements Engineering Conference (RE), 2011 19th IEEE International
Conference_Location :
Trento
Print_ISBN :
978-1-4577-0921-0
Electronic_ISBN :
1090-705X
DOI :
10.1109/RE.2011.6051658