用算法估计改进德尔菲法进行软件工作量估算的实验研究

Tharwon Arnuphaptrairong
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引用次数: 1

摘要

文献综述表明,软件项目管理的成功需要更精确的软件工作量和成本估算方法。专家判断和算法模型估计是文献中讨论的两种主要方法。据报道,这两种方法的准确度表现几乎不相上下。建议将两种方法结合使用以提高估计精度。德尔菲法是一种令人鼓舞的用于软件工作量估算的结构化专家判断方法,但令人惊讶的是,文献报道很少。本研究的目的是测试如果德尔菲过程中的参与者暴露于算法估计,德尔菲估计是否会更准确。因此进行了德尔福实验,其中德尔福过程中的参与者暴露于三种算法估计-功能点,COCOMO估计和用例点。结果表明,德尔菲估计比个别专家估计的统计组合略准确,但不具有统计学意义。然而,德尔菲估计在统计上比个人估计更准确。结果还表明,德尔菲估计略低于个别专家估计的统计组合,但也不具有统计显著性。适应性德尔菲实验显示了一种很有前途的提高软件成本估算精度的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Delphi Method with Algorithmic Estimates for Software Effort Estimation: An Experimental Study
Literature review shows that more accurate software effort and cost estimation methods are needed for software project management success. Expert judgment and algorithmic model estimation are two predominant methods discussed in the literature. Both are reported almost at the comparable level of accuracy performance. The combination of the two methods is suggested to increase the estimation accuracy. Delphi method is an encouraging structured expert judgment method for software effort group estimation but surprisingly little was reported in the literature. The objective of this study is to test if the Delphi estimates will be more accurate if the participants in the Delphi process are exposed to the algorithmic estimates. A Delphi experiment where the participants in the Delphi process were exposed to three algorithmic estimates – Function Points, COCOMO estimates, and Use Case Points, was therefore conducted. The findings show that the Delphi estimates are slightly more accurate than the statistical combination of individual expert estimates, but they are not statistically significant. However, the Delphi estimates are statistically significant more accurate than the individual estimates. The results also show that the Delphi estimates are slightly less optimistic than the statistical combination of individual expert estimates but they are not statistically significant either. The adapted Delphi experiment shows a promising technique for improving the software cost estimation accuracy.
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