基于深度学习的项目内软件缺陷预测模型

K.Guna sekaran, L. S. P. Annabel
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引用次数: 1

摘要

软件的测试保证了提供有意义的软件,因此在生产高质量软件的过程中,缺陷预测已成为一项不可避免的工作。软件缺陷预测的主要目的是找出软件中存在的各种缺陷,并将重点放在测试工作上。许多现有的软件缺陷预测框架都非常简单,使得开发人员很难获得详细的参考信息。目前,许多深度学习模型,如径向基函数神经网络(RBF)和卷积神经网络(CNN),被应用于从深度学习模型和抽象语法树(AS t)自动创建的特征,以帮助提高预测缺陷的性能。但是,由于RBF和CNN算法的数据集大小和基线选择不当,产生的结果不能提供很高的准确性。为了解决这些最先进的问题,我们从各种缺陷数据集中构建了一个数据集,即Kamei数据集,NASA数据集和PROMISE源代码(PSC)数据集。在本研究中,该数据集被命名为组合缺陷分析数据集(CDA)。然后,提出了一种增强卷积神经网络(ECNN)模型,用于预测项目内部软件(IPDP)中的缺陷,并将结果与不同的模型相关联。实验结果表明,与其他相关模型相比,增强型CNN(ECNN)模型是有效的,并且优于其他针对IPDP提出的机器学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Based Model for Defect Prediction in Intra-Project Software
Testing of software ensures the supply of meaningful software and hence prediction of defects in producing high quality software has become an inevitable one. Software defect prediction's main aim is to find out various bugs present in software and focus on testing efforts. Many of existing software defect prediction frameworks are much simple, making it difficult for developers to get detailed reference information. Nowadays, many deep learning models, like the Radial Base Functional Neural Network(RBF) and the Convolutional Neural Network (CNN), are applied to features which are created automatically from deep learning models and abstract syntax trees (AS Ts) to aid in the improved performance of predicting defects. But the results generated using RBF and CNN algorithms are not able to provide much accuracy due to its restricted size of dataset and improper baseline selections. To resolve these state-of-the-art problems, we have constructed a dataset taken from various defect datasets namely the Kamei Dataset, NASA Dataset and the PROMISE Source Code (PSC) dataset. In this research, the dataset is named as Combination Defect Analysis Dataset (CDA). Then, an Enhanced Convolutional Neural Network (ECNN) model is proposed for predicting defects in Intra-Project software (IPDP) and associated results to different models. Experimental results implied that Enhanced CNN(ECNN) model is efficient compared to the other associated models, along with it outclassing the other machine learning models suggested for IPDP.
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