Predicting Delays in Software Projects Using Networked Classification (T)

Morakot Choetkiertikul, K. Dam, T. Tran, A. Ghose
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引用次数: 43

Abstract

Software projects have a high risk of cost and schedule overruns, which has been a source of concern for the software engineering community for a long time. One of the challenges in software project management is to make reliable prediction of delays in the context of constant and rapid changes inherent in software projects. This paper presents a novel approach to providing automated support for project managers and other decision makers in predicting whether a subset of software tasks (among the hundreds to thousands of ongoing tasks) in a software project have a risk of being delayed. Our approach makes use of not only features specific to individual software tasks (i.e. local data) -- as done in previous work -- but also their relationships (i.e. networked data). In addition, using collective classification, our approach can simultaneously predict the degree of delay for a group of related tasks. Our evaluation results show a significant improvement over traditional approaches which perform classification on each task independently: achieving 46% -- 97% precision (49% improved), 46% -- 97% recall (28% improved), 56% -- 75% F-measure (39% improved), and 78% -- 95% Area Under the ROC Curve (16% improved).
使用网络分类(T)预测软件项目的延迟
软件项目具有成本和进度超支的高风险,这一直是软件工程社区长期关注的问题。软件项目管理的挑战之一是在软件项目中固有的不断和快速变化的背景下对延迟做出可靠的预测。本文提出了一种新颖的方法,为项目经理和其他决策者提供自动化支持,以预测软件项目中的软件任务子集(在数百到数千个正在进行的任务中)是否有延迟的风险。我们的方法不仅利用了特定于单个软件任务的特性(即本地数据)——正如在以前的工作中所做的那样——而且还利用了它们的关系(即网络数据)。此外,使用集体分类,我们的方法可以同时预测一组相关任务的延迟程度。我们的评估结果显示,与独立对每个任务进行分类的传统方法相比,该方法有了显著的改进:达到46% - 97%的精度(提高49%),46% - 97%的召回率(提高28%),56% - 75%的f测量(提高39%)和78% - 95%的ROC曲线下面积(提高16%)。
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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