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On Learning Software Effort Estimation

机译:论学习软件努力估算

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摘要

Software Effort is defined as the person months required to make a software application. Software effort estimation is usually the most important phase in the software development life cycle. Software effort estimation requires high accuracy at early phases, but accurate estimations are difficult to achieve. Machine Learning techniques are widely exploited that assist in getting improved evaluated values. In this paper we review, analyze and evaluate the work done in this area. This paper highlights general overview of effort estimation using different machine learning techniques containing latest trends in this field. Introducing the new approach is supportive for the reduction of cost and effort. The performance of the proposed method is evaluated to compute the project effort and comparison based on the parameters such as Correct_Percent, Mean Absolute Error (MAE), Root Mean Absolute Error (RMAE) and Relative Absolute Error (RAE).
机译:软件工作被定义为制作软件应用程序所需的人数。软件努力估计通常是软件开发生命周期中最重要的阶段。软件工作估计需要在早期阶段的高精度,但难以实现准确的估计。广泛利用机器学习技术,有助于获得改进的评估值。在本文中,我们审查,分析和评估该领域所做的工作。本文突出了使用含有此字段中最新趋势的不同机器学习技术的努力估算概述。介绍新方法支持降低成本和努力。评估所提出的方法的性能以计算项目工作量并基于诸如RICTER_PERCENT,平均绝对误差(MAE),根平均绝对误差(RMAE)和相对绝对误差(RAE)的参数进行比较。

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