Ensemble of Learning Project Productivity in Software Effort Based on Use Case Points

Mohammad Azzeh, A. B. Nassif, Shadi Banitaan, Cuauhtémoc López Martín
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引用次数: 5

Abstract

It is well recognized that the project productivity is a key driver in estimating software project effort from Use Case Point size metric at early software development stages. Although, there are few proposed models for predicting productivity, there is no consistent conclusion regarding which model is the superior. Therefore, instead of building a new productivity prediction model, this paper presents a new ensemble construction mechanism applied for software project productivity prediction. Ensemble is an effective technique when performance of base models is poor. We proposed a weighted mean method to aggregate predicted productivities based on average of errors produced by training model. The obtained results show that the using ensemble is a good alternative approach when accuracies of base models are not consistently accurate over different datasets, and when models behave diversely.
基于用例点的软件工作中学习项目生产力的集成
众所周知,在早期软件开发阶段,项目生产力是评估软件项目工作的关键驱动因素,它来自用例点大小度量。虽然目前提出的预测生产率的模型很少,但关于哪种模型更优并没有一致的结论。因此,本文提出了一种应用于软件项目生产率预测的集成构建机制,而不是建立新的生产率预测模型。在基础模型性能较差的情况下,集成是一种有效的技术。我们提出了一种加权平均方法,以训练模型产生的误差平均值为基础,对预测生产率进行汇总。结果表明,当基础模型在不同数据集上的精度不一致时,以及模型表现不同时,使用集成是一种很好的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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