Software Defect Prediction Using Deep Q-Learning Network-Based Feature Extraction

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
IET Software Pub Date : 2024-05-30 DOI:10.1049/2024/3946655
Qinhe Zhang, Jiachen Zhang, Tie Feng, Jialang Xue, Xinxin Zhu, Ningyang Zhu, Zhiheng Li
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引用次数: 0

Abstract

Machine learning-based software defect prediction (SDP) approaches have been commonly proposed to help to deliver high-quality software. Unfortunately, all the previous research conducted without effective feature reduction suffers from high-dimensional data, leading to unsatisfactory prediction performance measures. Moreover, without proper feature reduction, the interpretability and generalization ability of machine learning models in SDP may be compromised, hindering their practical utility in diverse software development environments. In this paper, an SDP approach using deep Q-learning network (DQN)-based feature extraction is proposed to eliminate irrelevant, redundant, and noisy features and improve the classification performance. In the data preprocessing phase, the undersampling method of BalanceCascade is applied to divide the original datasets. As the first step of feature extraction, the weight ranking of all the metric elements is calculated according to the expected cross-entropy. Then, the relation matrix is constructed by applying random matrix theory. After that, the reward principle is defined for computing the Q value of Q-learning based on weight ranking, relation matrix, and the number of errors, according to which a convolutional neural network model is trained on datasets until the sequences of metric pairs are generated for all datasets acting as the revised feature set. Various experiments have been conducted on 11 NASA and 11 PROMISE repository datasets. Sensitive analysis experiments show that binary classification algorithms based on SDP approaches using the DQN-based feature extraction outperform those without using it. We also conducted experiments to compare our approach with four state-of-the-art approaches on common datasets, which show that our approach is superior to these methods in precision, F-measure, area under receiver operating characteristics curve, and Matthews correlation coefficient values.

Abstract Image

利用基于深度 Q 学习网络的特征提取进行软件缺陷预测
人们普遍提出了基于机器学习的软件缺陷预测(SDP)方法,以帮助交付高质量的软件。遗憾的是,以往的所有研究都没有对特征进行有效的缩减,因而受到高维数据的困扰,导致预测性能指标不尽人意。此外,如果没有适当的特征缩减,SDP 中机器学习模型的可解释性和泛化能力可能会受到影响,从而阻碍其在各种软件开发环境中的实际应用。本文提出了一种基于深度 Q 学习网络(DQN)特征提取的 SDP 方法,以消除无关、冗余和噪声特征,提高分类性能。在数据预处理阶段,采用 BalanceCascade 的欠采样方法对原始数据集进行划分。作为特征提取的第一步,根据预期交叉熵计算所有度量元素的权重排序。然后,运用随机矩阵理论构建关系矩阵。然后,根据权重排序、关系矩阵和错误数定义奖励原则,计算 Q-learning 的 Q 值,并根据该原则在数据集上训练卷积神经网络模型,直到生成所有数据集的度量对序列作为修正特征集。在 11 个 NASA 和 11 个 PROMISE 数据库数据集上进行了各种实验。敏感性分析实验表明,使用基于 DQN 的特征提取的基于 SDP 方法的二元分类算法优于未使用 DQN 的算法。我们还进行了实验,在常见数据集上将我们的方法与四种最先进的方法进行了比较,结果表明我们的方法在精确度、F-measure、接收者操作特性曲线下面积和马修斯相关系数值方面都优于这些方法。
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来源期刊
IET Software
IET Software 工程技术-计算机:软件工程
CiteScore
4.20
自引率
0.00%
发文量
27
审稿时长
9 months
期刊介绍: IET Software publishes papers on all aspects of the software lifecycle, including design, development, implementation and maintenance. The focus of the journal is on the methods used to develop and maintain software, and their practical application. Authors are especially encouraged to submit papers on the following topics, although papers on all aspects of software engineering are welcome: Software and systems requirements engineering Formal methods, design methods, practice and experience Software architecture, aspect and object orientation, reuse and re-engineering Testing, verification and validation techniques Software dependability and measurement Human systems engineering and human-computer interaction Knowledge engineering; expert and knowledge-based systems, intelligent agents Information systems engineering Application of software engineering in industry and commerce Software engineering technology transfer Management of software development Theoretical aspects of software development Machine learning Big data and big code Cloud computing Current Special Issue. Call for papers: Knowledge Discovery for Software Development - https://digital-library.theiet.org/files/IET_SEN_CFP_KDSD.pdf Big Data Analytics for Sustainable Software Development - https://digital-library.theiet.org/files/IET_SEN_CFP_BDASSD.pdf
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