Computer Science ›› 2026, Vol. 53 ›› Issue (1): 262-270.doi: 10.11896/jsjkx.250100070
• Artificial Intelligence • Previous Articles Next Articles
JIA Jingdong, HOU Xin, WANG Zhe, HUANG Jian
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| [1]DABROWSKI J,LETIER E,PERINI A,et al.Analysing App reviews for software engineering:a systematic literature review[J].Empirical Software Engineering,2022,27(2):43. [2]XIAO J M,CHEN S Z,FENG Z Y,et al.Anautomatic analysis of user revews method for App evolution and maintenance[J].Chinese Journal of Computers,2020,43(11):2184-2202. [3]WANG Y,ZHENG L W,ZHANG Y Y,et al.Softwarerequirements mining method for chinese App user review data[J].Computer Science,2020,47(12):56-64. [4]HU T Y,JIANG Y.Mining of user’s comments reflecting usage feedback for App software[J].Journal of Software,2019,30(10):3168-3185. [5]YAO Y M,JIANG W Y,WANG Y L,et al.Non-functional requirements analysis based on application reviews in the Android App market[J].Information Resources Management Journal,2022,35(2):1-17. [6]JHA N,MAHMOUD A.Mining non-functional requirementsfrom App store reviews[J].Empirical Software Engineering,2019,24(5):1-37. [7]FU S H,XUE K K,YANG M Y,et al.An exploratory study on users’ resestance to mobile App updates:Using netnography and fsQCA[J].Technological Forecasting and Social Change,2023,191(6):122479. [8]HUNGER T,ARNOLD M,PESTINGER R.Risks and requirements in sustainable App development-a review[J].Sustainability,2023,15(8):7018. [9]DE LIMA V M A,DE ARAUJO A F,MARCACINI R M.Temporal dynamics of requirements engineering from mobile App reviews[J].PeerJ Computer Science,2022,8(2):e874. [10]NAYEBI M,KUZNETSOV K,CHEN P.Anatomy of functionality deletion:an exploratory study on mobile Apps[C]//International Conference on Mining Software Repositories(MSR).2018:243-253. [11]MAALEJ W,KERTANOVIC Z,NABIL H,et al.On the automatic classification of App reviews[J].Requirements Enginee-ring,2016,21:311-331. [12]BISWAS M,ANISH P R,GHAISAS S.Interpretable Appre-view classification with tansformers[C]//International Requirements Engineering Conference Workshops(RE).2024:26-34. [13]AL KILANI N,TAILAKH R,HANANI A.Automatic classification of Apps reviews for requirement engineering:exploring the customers need from healthcare Applications[C]//International Conference on Social Networks Analysis,Management and Security(SNAMS).2019:541-548. [14]MEMON Z A,MUNAWAR N,KAMAL M.App store mining for feature extraction:analyzing user reviews[J].Acta Scientiarum Technology,2023,46(1):e62867. [15]SUPRAYOGI E,BUDI I,MAHENDRA R.Information Extraction for Mobile Application User Review[C]//International Conference on Advanced Computer Science and Information Systems(ICACSIS).2018:343-348. [16]TANG X Z,TIAN H Y,KONG P F,et al.App review driven collaborative bug finding[J].Empirical Software Engineering,2024,29(5):124. [17]KEERTIPATI S,SAVARIMUTHU B T R,LICORISH S A.Approaches for prioritizing feature improvements extracted from App reviews[C]//International Conference on Evaluation and Assessment in Software Engineering(EASE).2016:1-6. [18]CHEN N,LIN J,HOI S C H,et al.AR-miner:mining informative reviews for developers from mobile App marketplace[C]//International Conference on Software Engineering(ICSE).2014:767-778. [19]PALOMBA F,SALZA P,CIURUMELEA A,et al.Recommending and localizing change requests for mobile Apps based on user reviews[C]//International Conference on Software Enginee-ring(ICSE).,2017:106-117. [20]GAO C Y,ZENG J C,LO D,et al.Understanding in-App advertising issues based on large scale App review analysis[J].Information and Software Technology,2022,142(1):106741. [21]GAO H C,GUO C K,BAI G D,et al.Sharing runtime permission issues for developers based on similar-App review mining[J].Journal of Systems and Software,2022,184(1):111118. [22]SARRO F,AI-SUBAIHIN A A,HARMAN M,et al.Featurelifecycles as they spread,migrate,remain,and die in App stores[C]//International Requirements Engineering Conference(RE).2015:76-85. [23]MURPHY-HILL E,ZIMMERMANN T,BIRD C,et al.The design of bug fixes[C]//International Conference on Software Engineering.IEEE,2013:332-341. [24]GUZMAN E,OLIVEIRA L,STEINER Y,et al.User feedback in the App store:a cross-cultural study[C]//International Conference on Software Engineering.2018:13-22. [25]MALGAONKAR S,LICORISH S A,SAVARIMUTHU B TR.Prioritizinguser concerns in App reviews:a study of requests for new features enhancements and bug fixes[J].Information and Software Technology,2022,142(1):106798. [26]NAYEBI M,KUZNETSOV K,ZELLER A,et al.Recommending and release planning of user-driven functionality deletion for mobile apps[J].Requirements Engineering,2024,29:459-480. [27]GU X,KIM S.What parts of your Apps are loved by users?[C]//International Conference on Automated Software Engineering(ASE).2015:760-770. [28]WU H Y,DENG W J,NIU X T,et al.Identifying key features from App user reviews[C]//International Conference on Software Engineering(ICSE).2021:922-932. [29]MARTENS D,MAALEJ W.Towards understanding and detecting fake reviews in App stores[J].Empirical Software Engineering,2019,24(6):3316-3355. [30]HE D J,PAN M H,HONG K,et al.Fakereview detection based on pu learning and behavior density[J].IEEE Network,2020,34(4):298-303. [31]WANG X H,ZHANG T,TAN Y H,et al.How to effectively mine App reviews concerning software ecosystem?A survey of review characteristics[J].Journal of Systems and Software,2024,213(1):112040. [32]GROOTENDORST M.BERTopic:neural topic modeling with a class-based TF-IDF procedure[J].arXiv:2203.05794,2022. [33]GALLAGHER R J,REING K,KALE D,et al.Anchored correlation explanation:Topic modeling with minimal domain know-ledge[J].Transactions of the Association for Computational Linguistics,2017,5(5):529-542. |
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