Fuzzy Analogy Based Effort Estimation: An Empirical Comparative Study

A. Idri, Ibtissam Abnane
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引用次数: 20

Abstract

Software Development Effort Estimation (SDEE) plays a primary role in software project management. Among several techniques suggested for estimating software development effort, analogy-based software effort estimation approaches stand out as promising techniques.In this paper, the performance of Fuzzy Analogy is compared with that of six other SDEE techniques (Linear Regression, Support Vector Regression, Multi-Layer Perceptron, M5P and Classical Analogy). The evaluation of the SDEE techniques was performed over seven datasets with two evaluation techniques (All-in and Jackknife). The first step of the evaluation aimed to ensure that the SDEE techniques outperformed random guessing by using the Standardized Accuracy (SA). Then, we used a set of reliable performance measures (Pred(0.25), MAE, MBRE, MIBRE and LSD) and Borda count to rank them and identify which techniques are the most accurate.The results suggest that when using All-in evaluation, Fuzzy Analogy statistically outperformed the other SDEE techniques regardless of the dataset used. However, when using Jackknife evaluation, the results obtained depended on the dataset and the SDEE technique used. The results suggest that Fuzzy Analogy is a promising technique for software development effort estimation.
基于模糊类比的工作量估算:实证比较研究
软件开发工作量评估(SDEE)在软件项目管理中起着重要的作用。在建议用于评估软件开发工作量的几种技术中,基于类比的软件工作量评估方法作为有前途的技术脱颖而出。本文将模糊类比与其他六种SDEE技术(线性回归、支持向量回归、多层感知器、M5P和经典类比)的性能进行了比较。SDEE技术的评估在7个数据集上进行,采用两种评估技术(All-in和Jackknife)。评估的第一步旨在通过使用标准化精度(SA)来确保SDEE技术优于随机猜测。然后,我们使用一组可靠的性能指标(Pred(0.25), MAE, MBRE, MIBRE和LSD)和Borda计数对它们进行排名,并确定哪些技术最准确。结果表明,当使用All-in评价时,无论使用何种数据集,模糊类比在统计上都优于其他SDEE技术。然而,当使用Jackknife评估时,获得的结果取决于数据集和使用的SDEE技术。结果表明,模糊类比是一种很有前途的软件开发工作量估算技术。
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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