Computer Science ›› 2025, Vol. 52 ›› Issue (11A): 250200052-11.doi: 10.11896/jsjkx.250200052
• Computer Software & Architecture • Previous Articles Next Articles
DENG Tao1, DENG Ye2
CLC Number:
| [1]STRANDBERG P E,AFZAL W,SUNDMARK D.Software test results exploration and visualization with continuous integration and nightly testing[J].International Journal on Software Tools for Technology Transfer,2022,24(2):261-285. [2]AL QASEM O,AKOUR M,ALENEZIM.The influence of deep learning algorithms factors in software fault prediction[J].IEEE Access,2020,8:63945-63960. [3]BHANDARI K,KUMAR K,SANGALA L.Data quality issues in software fault prediction:a systematic literature review[J].Artificial Intelligence Review,2023,56(8):7839-7908. [4]PANDEY S,KUMAR K.Software Fault Prediction for Imbalanced Data:A Survey on Recent Developments[J].Procedia Computer Science,2023,218:1815-1824. [5]SRIVASTAVA V,CHAUHAN R K,LOHIA P.Highly effi-cient cesium-based halide perovskite solar cell using SCAPS-1D software:theoretical study[J].Journal of Optics,2023,52(3):1218-1225. [6]DEVALE P,JADHAV R B,BIDWE R V,et al.Machine Learning and Just-in-Time Strategies for Effective Bug Tracking in Software Development[J].International Journal of Intelligent Systems and Applications in Engineering,2024,12(6s):749-758. [7]ZHENG W,SHEN T,CHEN X,et al.Interpretability application of the Just-in-Time software defect prediction model[J].Journal of Systems and Software,2022,188:111245. [8]GOYAL S.Static code metrics-based deep learning architecture for software fault prediction[J].Soft Computing,2022,26(24):13765-13797. [9]SATAPATHY S C,JENA A K,SINGH J,et al.A novel approach of software fault prediction using deep learning technique[J].Automated Software Engineering:A Deep Learning-Based Approach,2020:73-91. [10]KHAN B,IQBAL D,BADSHAH S.Cross-Project SoftwareFault Prediction Using Data Leveraging Technique to Improve Software Quality[C]//Proceedings of the 24th International Conference on Evaluation and Assessment in Software Engineering.2020:434-438. [11]WU F J.Research progress on static software defect prediction[J].Journal of Computer Science and Exploration,2019,13(10):1621-1637. [12]LI Y,LIU Z D,ZHANG H J.A survey on cross-project software defect prediction methods[J].Computer Technology and Development,2020,30(3):98-103,121. [13]LIU X T,GUO Z Q,LIU S R,et al.Comparative experiments among software defect prediction models:Issues,progress and challenges[J].Journal of Software,2023,34(2):582-624. [14]CAI L,FAN Y R,YAN M,et al Research progress on just-in-time software defect prediction[J].Journal of Software,2019,30(5):1288-1307. [15]BATOOL I,KHAN T A.Software fault prediction using deep learning techniques[J].Software Quality Journal,2023,31:1-40. [16]ZAIN Z M,SAKRI S,ISMAILN H A.Application of DeepLearning in Software Defect Prediction:Systematic Literature Review and Meta-analysis[J].Information and Software Technology,2023,158:107175. [17]PANDEY S K,MISHRA R B,TRIPATHI A K.Machine learning based methods for software fault prediction:A survey[J].Expert Systems with Applications,2021,172:114595. [18]RATHORE S S,KUMAR S.A study on software fault prediction techniques[J].Artificial Intelligence Review,2019,51:255-327. [19]LIU Y,LIU B.A modified uncertain maximum likelihood estimation with applications in uncertain statistics[J].Communications in Statistics-Theory and Methods,2024,53(18):6649-6670. [20]SAINSBURY-DALE M,ZAMMIT-MANGION A,RICHARDS J,et al.Neural Bayes estimators for irregular spatial data using graph neural networks[J].Journal of Computational and Graphical Statistics,2025,34:1-16. [21]AL-OMARI S,ELSHEIKH Y,AZZEH M.A New Learning to Rank Approach for Software Defect Prediction[J].International Journal of Advanced Computer Science and Applications,2022,13(8). [22]SIVAVELU S,PALANISAMY V.Piecewise Congruence Re-gressed Indexive Extreme Learning Classifier for Software Fault Prediction[J].IEEE Access,12. [23]KHAN B,IQBAL D,BADSHAH S.Cross-Project SoftwareFault Prediction Using Data Leveraging Technique to Improve Software Quality[C]//Proceedings of the 24th International Conference on Evaluation and Assessment in Software Engineering.2020:434-438. [24]WANG H,KHOSHGOFTAAR T M.A study on software metric selection for software fault prediction[C]//18th IEEE International Conference On Machine Learning And Applications(ICMLA 2019).IEEE,2019:1045-1050. [25]LI L,NAHAYO L,HABIYAREMYE G,et al.Applicability and performance of statistical index,certain factor and frequency ratio models in mapping landslides susceptibility in Rwanda[J].Geocarto International,2022,37(2):638-656. [26]RATHORE S S.An exploratory analysis of regression methods for predicting faults in software systems[J].Soft Computing,2021,25:14841-14872. [27]SINGH R,RATHORE S S.Linear and non-linear bayesian regression methods for software fault prediction[J].International Journal of System Assurance Engineering and Management,2022,13(4):1864-1884. [28]HUANG X W,FAN G S,YU H Q,et al.Software defect prediction based on heavy sub-node abstract syntax trees[J].Journal of Computer Engineering,2025,42(1):25-2,48. [29]SURYAWANSHI R,KADAM A.Software Defect Prediction byLogistic Regression with Gradient Descent Cost Computation[C]//International Conference on Emerging Smart Computing and Informatics(ESCI )2024.IEEE,2024:1-5. [30]PRITCHARD S,MITRA B,NAGARAJU V.Three-Stage Ad-justed Regression Forecasting for Software Defect Prediction[C]//Annual Reliability and Maintainability Symposium(RAMS 2024).IEEE,2024:1-6. [31]YU X,KEUNG J,XIAO Y,et al.Predicting the precise number of software defects:Are we there yet?[J].Information and Software Technology,2022,146:106847. [32]HABTEMARIAM G M,MOHAPATRA S K.A genetic algo-rithm-based approach for test case prioritization[C]//Information and Communication Technology for Development for Africa:Second International Conference(ICT4DA 2019).Bahir Dar,Ethiopia,Revised Selected Papers 2.Springer International Publishing,2019:24-37. [33]SREEDEVI E,PREMALATHA V,SIVAKUMAR S,et al.Acomparative study on new classification algorithm using NASA MDP datasets for software defect detection[C]//International Conference on Intelligent Sustainable Systems(ICISS 2019).IEEE,2019:312-317. [34]XU Z,LIU J,LUO X,et al.Cross-version defect prediction via hybrid active learning with kernel principal component analysis[C]//IEEE 25th international conference on software analysis,evolution and reengineering(SANER 2018).IEEE,2018:209-220. [35]SHEN Y,HU S,CAI S,et al.Software Defect Prediction based on Bayesian Optimization Random Forest[C]//9th International Conference on Dependable Systems and Their Applications(DSA 2022).IEEE,2022:1012-1013. [36]WEI H,HU C,CHEN S,et al.Establishing a software defectprediction model via effective dimension reduction[J].Information Sciences,2019,477:399-409. [37]BALARAM A,VASUNDRA S.Prediction of software fault-prone classes using ensemble random forest with adaptive synthetic sampling algorithm[J].Automated Software Engineering,2022,29(1):6. [38]GOYAL S.Effective software defect prediction using supportvector machines(SVMs)[J].International Journal of System Assurance Engineering and Management,2022,13(2):681-696. [39]ZHANG J,LI D,WONG W E,et al.A Hybrid Sampling andMulti-Objective Optimization Approach for Enhanced Software Defect Prediction[J].arXiv:2410.10046,2024. [40]ZHANG Y.Software defect prediction model based on deeplearning[C]//International Conference on Power,Electrical Engineering,Electronics and Control(PEEEC 2024).IEEE,2024:954-959. [41]ZHANG S,JIANG S,YAN Y.A Hierarchical Feature Ensemble Deep Learning Approach for Software Defect Prediction[J].International Journal of Software Engineering and Knowledge Engineering,2023,33(4):543-573. [42]CUI M T,WU K Q,MARIANI M S. Software defect prediction based on feature extraction and Stacking ensemble learning[J].Computer Applications and Software,2021,47(12):230-235,248. [43]LIU C,SANOBER S,ZAMANI A S,et al.Defect PredictionTechnology in Software Engineering Based on Convolutional Neural Network[J].Security and Communication Networks,2022,2022(1):5058461. [44]LIN H,LI B,WANG X,et al.Automated defect inspection of LED chip using deep convolutional neural network[J].Journal of Intelligent Manufacturing,2019,30:2525-2534. [45]QIU X,FAN P,REN J.Convolutional Neural Network-BasedResearch on Software Engineering Defect Prediction[C]//Proceedings of the 6th International Conference on Information Technologies and Electrical Engineering.2023:305-308. [46]ZENG C,ZHOU C Y,LV S K,et al.Gcn2defect:Graph convolutional networks for smotetomek-based software defect prediction[C]//IEEE 32nd International Symposium on Software Reliability Engineering(ISSRE 2021).IEEE,2021:69-79. [47]KHLEEL N A A,NEHÉZ K.A novel approach for software defect prediction using CNN and GRU based on SMOTE Tomek method[J].Journal of Intelligent Information Systems,2023,60(3):673-707. [48]QIU S,LU L,CAI Z,et al.Cross-Project Defect Prediction viaTransferable Deep Learning-Generated and Handcrafted Features[C]//SEKE.2019:431-552. [49]SEKARAN K,ANNABEL L S P.A Deep Learning Based Model for Defect Prediction in Intra-Project Software[C]//7th International Conference on Trends in Electronics and Informatics(ICOEI 2023).IEEE,2023:1148-1155. [50]NEVENDRA M,SINGH P.Defect count prediction via metric-based convolutional neural network[J].Neural Computing and Applications,2021,33(22):15319-15344. [51]BALASUBRAMANIAM S,GOLLAGI S G.Software defectprediction via optimal trained convolutional neural network[J].Advances in Engineering Software,2022,169:103138. [52]LI X,ZHU Z.Software Defect Detection Based on Feature Fusion and Alias Analysis[C]//IEEE International Test Conference in Asia(ITC-Asia 2023).IEEE,2023:1-6. [53]KHLEEL N A A,NEHÉZ K.Software defect prediction using a bidirectional LSTM network combined with oversampling techniques[J].Cluster Computing,2024,27(3):3615-3638. [54]PANDEY S K,TRIPATHIA K.Cross-Project setting usingDeep learning Architectures in Just-In-Time Software Fault Prediction:An Investigation[C]//IEEE/ACM International Conference on Automation of Software Test(AST 2023).IEEE,2023:24-34. [55]FAN G,DIAO X,YU H,et al.Software defect prediction via attention-based recurrent neural network[J].Scientific Programming,2019,2019(1):6230953. [56]DAM H K,PHAM T,NG S W,et al.A deep tree-based model for software defect prediction[J].arXiv:1802.00921,2018. [57]BORANDAG E.Software fault prediction using an RNN-based deep learning approach and ensemble machine learning techniques[J].Applied Sciences,2023,13(3):1639. [58]WANG H,ZHUANG W,ZHANG X.Software defect prediction based on gated hierarchical LSTMs[J].IEEE Transactions on Reliability,2021,70(2):711-727. [59]MUNIR H S,REN S,MUSTAFA M,et al.Attention basedGRU-LSTM for software defect prediction[J].Plos One,2021,16(3):e0247444. [60]FARID A B,FATHY E M,ELDINA S,et al.Software defect prediction using hybrid model(CBIL) of convolutional neural network(CNN) and bidirectional long short-term memory(Bi-LSTM)[J].PeerJ Computer Science,2021,7:e739. [61]LUO N,MA Y,LI J,et al.A Just-in-time Software Defect Detection Method Using Generative Adversarial Networks[C]//4th International Conference on Electronic Communication and Artificial Intelligence(ICECAI 2023).IEEE,2023:37-45. [62]CHOUHAN S S,RATHORE S S.Generative adversarial net-works-based imbalance learning in software aging-related bug prediction[J].IEEE Transactions on Reliability,2021,70(2):626-642. [63]KUMAR P S,VENKATESAN R.IMproving software defectprediction using generative adversarial networks[J].Int.J.Sci.Eng.Appl,2020,9:117-120. [64]PAL S.Generative adversarial network-based cross-project fault prediction[J].arXiv:2105.07207,2021. [65]XU J P,GUO X F,WANG R B,et al.Software defect prediction aggregation model based on GAN data augmentation[J].Computer Science,2023,50(12):24-31. [66]ZHANG H W,JIA X Y.Oversampling method for class-imba-lanced software defect prediction based on generative adversarial networks[J].Journal of Nanjing University of Science and Technology,,2023,47(2):174-182. [67]SONG W,GAN L,BAO T.Software Defect Prediction via Ge-nerative Adversarial Networks and Pre-Trained Model[J].International Journal of Advanced Computer Science & Applications,2024,15(3). [68]MAO J E,ZHOU S J,ZHANG S Q,et al.Software defect prediction method based on attention and cost sensitivity[J].Computer Measurement & Control,2024,32(9):94-100. [69]QU T,LIU W,ZHENG W,et al.Software Defect DetectionMethod Based on Graph Structure and Deep Neural Network[C]//International Conference on Asian Language Processing(IALP 2022).IEEE,2022:395-400. [70]MASHHADI E,AHMADVAND H,HEMMATI H.Method-level bug severity prediction using source code metrics and LLMs[C]//IEEE 34th International Symposium on Software Reliability Engineering(ISSRE 2023).IEEE,2023:635-646. [71]SULTAN M F,KARIM T,SHAON M S H,et al.EnhancedLLM-Based Framework for Predicting Null Pointer Dereference in Source Code[J].arXiv:2412.00216,2024. [72]NAKHLA RAFI M,KIM D J,CHENT H,et al.EnhancingFault Localization Through Ordered Code Analysis with LLM Agents and Self-Reflection[J].arXiv:2409.13642,2024. [73]HOSSAIN S B,JIANG N,ZHOU Q,et al.A deep dive into large language models for automated bug localization and repair[J].Proceedings of the ACM on Software Engineering,2024,1(FSE):1471-1493. [74]HE Z,PETERS F,MENZIES T,et al.Learning from open-source projects:An empirical study on defect prediction[C]//2013 ACM/IEEE International Symposium on Empirical Software Engineering and Measurement.IEEE,2013:45-54. [75]COTRONEO D,NATELLA R,PIETRANTUONO R.Predicting aging-related bugs using software complexity metrics[J].Performance Evaluation,2013,70(3):163-178. [76]MALHOTRA R,SHUKLA S,SAWHNEY G.Assessment of defect prediction models using machine learning techniques for object-oriented systems[C]//5th International Conference on Reliability,Infocom Technologies and Optimization(Trends and Future Directions)(ICRITO 2016).IEEE,2016:577-583. [77]NASA Defect Dataset[OL].https://github.com/klainfo/NASADefectDataset. [78]LECUN Y.The MNIST database of handwritten digits[J/OL].http://yann.lecun.com/exdb/mnist/,1998. [79]NAIRKrizhevsky,HINTON Vinod,CHRISTOPHER Geoffrey,Mike Papadakis,and Anthony Ventresque.The cifar-10 dataset[EB/OL].http://www.cs.toronto.edu/kriz/ cifar.html. [80]RUSSAKOVSKY O,DENG J,SU H,et al.Imagenet large scale visual recognition challenge[J].International Journal of Computer Vision,2015,115:211-252. [81]OKUN V,DELAITRE A,BLACK P E.Report on the staticanalysis tool exposition(sate) iv[J].NIST Special Publication,2013,500:297. [82]ZHANG C,XIANG J,HAO R,et al.SGT:Aging-related bugprediction via semantic feature learning based on graph-transformer[J].Journal of Systems and Software,2024,217:112156. [83]LU G,LING F,LI J,et al.Graph Attention-Based Dual Enhancement for Multiview Clustering[J].IEEE Transactions on Computational Social Systems,2025:1-10. [84]HE T,YANG M,HU W,et al.Analysis of the Effectiveness of Large Language Model Feature in Source Code Defect Detection[C]//3rd International Conference on Artificial Intelligence and Computer Information Technology(AICIT 2024).IEEE,2024:1-4. [85]WEN X C,WANG X,CHEN Y,et al.Vuleval:Towards repository-level evaluation of software vulnerability detection[J].ar-Xiv:2404.15596,2024. [86]SHANKAR MISHRA A,SINGH RATHORE S.Implicit andexplicit mixture of experts models for software defect prediction[J].Software Quality Journal,2023,31(4):1331-1368. [87]JU E,LEE J,RYU D.DefectGRANDE:Hybrid Approach forClass Imbalance in Software Defect Prediction[C]//IEEE International Conference on Big Data and Smart Computing(BigComp 2025).IEEE,2025:90-91. [88]LIU W,YUE Y,CHEN X,et al.SeDPGK:Semi-supervised software defect prediction with graph representation learning and knowledge distillation[J].Information and Software Technology,2024,174:107510. [89]BHUSHAN M,DUARTE J Á G,NEGI A,et al.An ontological knowledge-based method for handling feature model defects due to dead feature[J].Engineering Applications of Artificial Intelligence,2024,136:109000. [90]ASAL B,DEMIR M Ö.Enhancing Software Defect Predictionthrough Explainable AI:Integrating SHAP and LIME in a Vo-ting Classifier Framework[C]//8th International Artificial Intelligence and Data Processing Symposium(IDAP 2024).IEEE,2024:1-7. [91]YAN Z,ZHANG L.Interpretable Wind Power Prediction:AMachine Learning Perspective Using Lightgbm and SHAP[C]//2nd International Conference on Artificial Intelligence and Automation Control(AIAC 2024).IEEE,2024:225-229. |
| [1] | QIAO Yu, XU Tao, ZHANG Ya, WEN Fengpeng, LI Qiangwei. Graph Neural Network Defect Prediction Method Combined with Developer Dependencies [J]. Computer Science, 2025, 52(6): 52-57. |
| [2] | ZHU Xiaoyan, WANG Wenge, WANG Jiayin, ZHANG Xuanping. Just-In-Time Software Defect Prediction Approach Based on Fine-grained Code Representationand Feature Fusion [J]. Computer Science, 2025, 52(1): 242-249. |
| [3] | LI Huilai, YANG Bin, YU Xiuli, TANG Xiaomei. Explainable Comparison of Software Defect Prediction Models [J]. Computer Science, 2023, 50(5): 21-30. |
| [4] | LI Xiaohuan, CHEN Bitao, KANG Jiawen, YE Jin. Coalition Game-assisted Joint Resource Optimization for Digital Twin-assisted Edge Intelligence [J]. Computer Science, 2023, 50(2): 42-49. |
| [5] | XU Jinpeng, GUO Xinfeng, WANG Ruibo, LI Jihong. Aggregation Model for Software Defect Prediction Based on Data Enhancement by GAN [J]. Computer Science, 2023, 50(12): 24-31. |
| [6] | WANG Zichen, YUAN Chengsheng, WANG Yili, GUO Ping, FU Zhangjie. Lightweight Group Key Agreement for Industrial Internet of Things [J]. Computer Science, 2023, 50(11A): 230700075-10. |
| [7] | Ran WANG, Jiang-tian NIE, Yang ZHANG, Kun ZHU. Clustering-based Demand Response for Intelligent Energy Management in 6G-enabled Smart Grids [J]. Computer Science, 2022, 49(6): 44-54. |
| [8] | ZHANG Xiao-mei, CAO Ying, LOU Ping, JIANG Xue-mei, YAN Jun-wei, LI Da. Lossless Data Compression Method Based on Edge Computing [J]. Computer Science, 2022, 49(11A): 210500195-6. |
| [9] | LI Bei-bei, SONG Jia-rui, DU Qing-yun, HE Jun-jiang. DRL-IDS:Deep Reinforcement Learning Based Intrusion Detection System for Industrial Internet of Things [J]. Computer Science, 2021, 48(7): 47-54. |
| [10] | ZHENG Xiao-meng, GAO Meng, TENG Jun-yuan. Research on Construction Method of Defect Prediction Dataset for Spacecraft Software [J]. Computer Science, 2021, 48(6A): 575-580. |
| [11] | WANG Wei-hong, CHEN Zhen-yu. Intelligent Manufacturing Security Model Based on Improved Blockchain [J]. Computer Science, 2021, 48(2): 295-302. |
| [12] | TENG Jun-yuan, GAO Meng, ZHENG Xiao-meng, JIANG Yun-song. Noise Tolerable Feature Selection Method for Software Defect Prediction [J]. Computer Science, 2021, 48(12): 131-139. |
| [13] | QIU Shao-jian, CAIZi-yi, LU Lu. Cost-sensitive Convolutional Neural Network Model for Software Defect Prediction [J]. Computer Science, 2019, 46(11): 156-160. |
| [14] | HU Meng-yuan, HUANG Hong-yun, DING Zuo-hua. Ensemble Model for Software Defect Prediction [J]. Computer Science, 2019, 46(11): 176-180. |
| [15] | XUE Can-guan, YAN Xue-feng. Software Defect Prediction Based on Improved Deep Forest Algorithm [J]. Computer Science, 2018, 45(8): 160-165. |
|
||