采用特征选择方法的机器学习方法评估软件服务开发工作量

A. K. Bardsiri, S. M. Hashemi
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引用次数: 5

摘要

近年来,软件服务开发所需工作量的评估一直是服务领域中最重要的主题。准确的工作量估算是项目成功管理和控制的关键因素。对浪费系统资源的高估和低估危及相关企业的地位。开发工作量估计是在专家判断、算法和机器学习方法的帮助下完成的。最近,机器学习的几种方法已被用于评估软件服务的工作量,并且看起来比其他两组要好得多。本文对这些方法的有效性与特征选择方法进行了实验评估,并对其准确性进行了全面的比较。对NASA和ISBSG两个著名的数据集进行了评估和比较,结果很好地说明了每种方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning methods with feature selection approach to estimate software services development effort
Estimate of the effort required for software services development has been a most important topic in the field of service in recent years. Exact estimate of effort is a key factor for project's successful management and control. Over and underestimation waste system resources endanger the position of the related company. The development effort estimation is done with the help of expert judgement, algorithmic and machine learning methods. Recently, several methods of machine learning have been used to estimation software services effort and look much better than the other two groups. This paper presents an experimental evaluation of the effectiveness of these methods with feature selection approach and done a thorough comparison of their accuracy. Evaluation and comparison have been made onto two famous datasets NASA and ISBSG and results are well demonstrated position of each one of these methods.
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