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Software Project Effort Estimation Based on Multiple Parametric Models Generated Through Data Clustering

机译:基于数据聚类生成的多个参数模型的软件项目工作量估算

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摘要

Parametric software effort estimation models usually consists of only a single mathematical relationship. With the advent of software repositories containing data from heterogeneous projects, these types of models suffer from poor adjustment and predictive accuracy. One possible way to alleviate this problem is the use of a set of mathematical equations obtained through dividing of the historical project datasets according to different parameters into subdatasets called partitions. In turn, partitions are divided into clusters that serve as a tool for more accurate models. In this paper, we describe the process, tool and results of such approach through a case study using a publicly available repository, ISBSG. Results suggest the adequacy of the technique as an extension of existing single-expression models without making the estimation process much more complex that uses a single estimation model. A tool to support the process is also presented.
机译:参数化软件工作量估算模型通常仅包含一个数学关系。随着包含来自异构项目的数据的软件存储库的出现,这些类型的模型遭受了较差的调整和预测准确性。缓解此问题的一种可能方法是使用一组数学方程,这些数学方程是通过根据不同参数将历史项目数据集划分为称为分区的子数据集而获得的。反过来,将分区划分为群集,这些群集用作更准确的模型的工具。在本文中,我们通过使用可公开获取的存储库ISBSG的案例研究来描述这种方法的过程,工具和结果。结果表明,该技术足以作为现有单表达模型的扩展,而不会使得使用单个评估模型的评估过程更加复杂。还提供了支持该过程的工具。

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