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Software Project Similarity Measurement Based on Fuzzy C-Means

机译:基于模糊C-均值的软件项目相似度度量

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摘要

A reliable and accurate similarity measurement between two software projects has always been a challenge for analogy-based software cost estimation. Since the effort for a new project is retrieved from similar historical projects, it is essentially to use the appropriate similarity measure that finds those close projects which in turn increases the estimation accuracy. In software engineering literature, there is a relatively little research addressed the issue of how to find out similarity between two software projects when they are described by numerical and categorical features. Despite simplicity of exiting similarity techniques such as: Euclidean distance, weighted Euclidean distance and maximum distance, it is hard to deal with categorical features. In this paper we present two approaches to measure similarity between two software projects based on fuzzy C-means clustering and fuzzy logic. The new approaches are suitable for both numerical and categorical features.
机译:对于基于类比的软件成本估算,两个软件项目之间可靠,准确的相似性度量一直是一个挑战。由于从相似的历史项目中检索新项目的工作量,因此本质上是使用适当的相似性度量来找到那些接近的项目,从而提高估计的准确性。在软件工程文献中,很少有研究解决当用数字和分类特征描述两个软件项目时如何找出它们之间的相似性的问题。尽管退出相似技术的方法很简单,例如:欧几里得距离,加权欧几里得距离和最大距离,但很难处理分类特征。在本文中,我们提出了两种基于模糊C均值聚类和模糊逻辑的度量两个软件项目之间相似性的方法。新方法适用于数字和分类特征。

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