Towards Predicting Software Defects with Clustering Techniques

Waheeda Almayyan
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引用次数: 4

Abstract

The purpose of software defect prediction is to improve the quality of a software project by building a predictive model to decide whether a software module is or is not fault prone. In recent years, much research in using machine learning techniques in this topic has been performed. Our aim was to evaluate the performance of clustering techniques with feature selection schemes to address the problem of software defect prediction problem. We analyzed the National Aeronautics and Space Administration (NASA) dataset benchmarks using three clustering algorithms: (1) Farthest First, (2) X-Means, and (3) self-organizing map (SOM). In order to evaluate different feature selection algorithms, this article presents a comparative analysis involving software defects prediction based on Bat, Cuckoo, Grey Wolf Optimizer (GWO), and particle swarm optimizer (PSO). The results obtained with the proposed clustering models enabled us to build an efficient predictive model with a satisfactory detection rate and acceptable number of features.
用聚类技术预测软件缺陷
软件缺陷预测的目的是通过建立预测模型来决定软件模块是否容易发生故障,从而提高软件项目的质量。近年来,在这个主题中使用机器学习技术进行了大量的研究。我们的目的是评估具有特征选择方案的聚类技术的性能,以解决软件缺陷预测问题。我们使用三种聚类算法分析了美国国家航空航天局(NASA)的数据集基准:(1)最远优先、(2)X均值和(3)自组织映射(SOM)。为了评估不同的特征选择算法,本文对基于蝙蝠、布谷鸟、灰太狼优化器(GWO)和粒子群优化器(PSO)的软件缺陷预测进行了比较分析。利用所提出的聚类模型获得的结果使我们能够建立一个高效的预测模型,该模型具有令人满意的检测率和可接受的特征数量。
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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