M. E. Fagan, Design and code inspections to reduce errors in program development, IBM Systems Journal, vol.15, issue.3, pp.182-211, 1976.

A. Bacchelli and C. Bird, Expectations, outcomes, and challenges of modern code review, International Conference on Software Engineering, ser. ICSE '13, pp.712-721, 2013.

, Gerrit code review, 2020.

. Github, , pp.2020-2025

. Codeflow, , pp.2020-2025

M. Beller, A. Bacchelli, A. Zaidman, and E. Juergens, Modern code reviews in open-source projects: Which problems do they fix, 11th Working Conference on Mining Software Repositories, ser. MSR, pp.202-211, 2014.

C. Sadowski, E. Söderberg, L. Church, M. Sipko, and A. Bacchelli, Modern code review: A case study at Google, 40th International Conference on Software Engineering: Software Engineering in Practice, ser. ICSE-SEIP '18, pp.181-190, 2018.

S. Mcintosh, Y. Kamei, B. Adams, and A. E. Hassan, The impact of code review coverage and code review participation on software quality: A case study of the Qt, VTK, and ITK projects, 11th Working Conference on Mining Software Repositories, ser. MSR, pp.192-201, 2014.

P. C. Rigby and M. Storey, Understanding broadcast based peer review on open source software projects, 33rd International Conference on Software Engineering, ser. ICSE '11, pp.541-550, 2011.

O. Kononenko, O. Baysal, and M. W. Godfrey, Code review quality: How developers see it, 2016 IEEE/ACM 38th International Conference on Software Engineering (ICSE), pp.1028-1038, 2016.

D. Vetter, Intel Open Source Technology Center -Patch Review, 2014.

A. Spark, , 2020.

A. Kafka, , pp.2020-2025, 2020.

I. Steinmacher, G. Robles, B. Fitzgerald, and A. Wasserman, Free and open source software development: the end of the teenage years, Journal of Internet Services and Applications, vol.8, issue.1, p.17, 2017.

L. F. Dias, I. Steinmacher, and G. Pinto, Who drives company-owned OSS projects: internal or external members?, Journal of the Brazilian Computer Society, vol.24, issue.1, p.17, 2018.

J. Bennett and S. Lanning, The Netflix prize, KDD Cup Workshop, pp.3-6, 2007.

J. Y. Chung and M. J. Kim, Music recommendation model by analysis of listener's musical preference factor of K-pop, 2018 International Conference on Information Science and System, ser. ICISS '18, pp.8-11, 2018.

,

Q. Han, M. Ji, I. Martinez-de-rituerto-de-troya, M. Gaur, and L. Zejnilovic, A hybrid recommender system for patient-doctor matchmaking in primary care, 2018 IEEE 5th International Conference on Data Science and Advanced Analytics, pp.481-490, 2018.

W. Guo, H. Gao, J. Shi, B. Long, L. Zhang et al., Deep natural language processing for search and recommender systems, 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, ser. KDD '19, pp.3199-3200, 2019.

S. Wang, D. Lo, B. Vasilescu, and A. Serebrenik, Entagrec++: An enhanced tag recommendation system for software information sites, Empirical Software Engineering, vol.23, issue.2, pp.800-832, 2018.

J. Rodas-silva, J. A. Galindo, J. García-gutiérrez, and D. Benavides, Resdec: Online management tool for implementation components selection in software product lines using recommender systems, 23rd International Systems and Software Product Line Conference -Volume B, ser. SPLC '19, vol.63, p.4, 2019.

A. Beam, , pp.2020-2025

A. Flink, , pp.2020-2025

A. Zookeeper, , pp.2020-2025

. Android, , pp.2020-2025

. Openstack, , pp.2020-2025

. Libreoffice, , pp.2020-2025

P. Thongtanunam, C. Tantithamthavorn, R. G. Kula, N. Yoshida, H. Iida et al., Who should review my code? a file location-based code-reviewer recommendation approach for modern code review, 2015 IEEE 22nd International Conference on Software Analysis, Evolution, and Reengineering (SANER), pp.141-150, 2015.

X. Xia, D. Lo, X. Wang, and X. Yang, Who should review this change?: Putting text and file location analyses together for more accurate recommendations, 2015 IEEE International Conference on Software Maintenance and Evolution (ICSME), pp.261-270, 2015.

, Apache Software Foundation, pp.2020-2021, 2020.

A. Hadoop, , pp.2020-2025

A. Hbase, , pp.2020-2025

A. Hive, , pp.2020-2025

G. Help, About pull requests, pp.2020-2025, 2020.

G. Developer, Graphql api v4, pp.2020-2025

. Revfinder, Replication data, pp.2020-2025

A. Gerrit, Gerrit code review -/changes/ rest api

P. Resnick and H. R. Varian, Recommender systems, Commun. ACM, vol.40, issue.3, pp.56-58, 1997.

F. Ricci, L. Rokach, B. Shapira, and P. B. Kantor, Recommender Systems Handbook, 2010.

Y. Hu, Y. Koren, and C. Volinsky, Collaborative filtering for implicit feedback datasets, 2008 Eighth IEEE International Conference on Data Mining, pp.263-272, 2008.

A. Cichocki, R. Zdunek, A. Phan, and S. Amari, Nonnegative Matrix and Tensor Factorizations: Applications to Exploratory Multi-Way Data Analysis and Blind Source Separation, vol.10, 2009.

Y. Zhou, D. Wilkinson, R. Schreiber, and R. Pan, Large-scale parallel collaborative filtering for the Netflix prize, 4th International Conference on Algorithmic Aspects in Information and Management, ser. AAIM '08, pp.337-348, 2008.

L. Baltrunas, B. Ludwig, and F. Ricci, Matrix factorization techniques for context aware recommendation, Fifth ACM Conference on Recommender Systems, ser. RecSys '11, pp.301-304, 2011.

,

J. Kawale, H. Bui, B. Kveton, L. T. Thanh, and S. Chawla, Efficient thompson sampling for online matrix-factorization recommendation, 28th International Conference on Neural Information Processing Systems, vol.1, pp.1297-1305, 2015.

B. Yi, X. Shen, H. Liu, Z. Zhang, W. Zhang et al., Deep matrix factorization with implicit feedback embedding for recommendation system, IEEE Transactions on Industrial Informatics, vol.15, issue.8, pp.4591-4601, 2019.

M. Winlaw, M. B. Hynes, A. Caterini, and H. D. Sterck, Algorithmic acceleration of parallel als for collaborative filtering: Speeding up distributed big data recommendation in Spark, 2015 IEEE 21st International Conference on Parallel and Distributed Systems (ICPADS), pp.682-691, 2015.

A. Y. Ng, Feature selection, L1 vs. L2 regularization, and rotational invariance, Twenty-First International Conference on Machine Learning, ser. ICML '04, p.78, 2004.

J. Bergstra, R. Bardenet, Y. Bengio, and B. Kégl, Algorithms for hyper-parameter optimization, Proceedings of the 24th International Conference on Neural Information Processing Systems, ser. NIPS'11, pp.2546-2554, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00642998

K. Eggensperger, M. Feurer, F. Hutter, J. Bergstra, J. Snoek et al., Towards an empirical foundation for assessing Bayesian optimization of hyperparameters, NIPS Workshop on Bayesian Optimization in Theory and Practice, 2013.

R. Kohavi, A study of cross-validation and bootstrap for accuracy estimation and model selection, Proceedings of the 14th International Joint Conference on Artificial Intelligence, vol.2, pp.1137-1143, 1995.

D. I. Ignatov, J. Poelmans, G. Dedene, and S. Viaene, A new crossvalidation technique to evaluate quality of recommender systems, Perception and Machine Intelligence, pp.195-202, 2012.

R. A. Baeza-yates and B. Ribeiro-neto, Modern Information Retrieval. USA, 1999.

J. Lipcak and B. Rossi, A large-scale study on source code reviewer recommendation, 2018 44th Euromicro Conference on Software Engineering and Advanced Applications (SEAA), pp.378-387, 2018.

V. Balachandran, Reducing human effort and improving quality in peer code reviews using automatic static analysis and reviewer recommendation, 2013 International Conference on Software Engineering, ser. ICSE '13, pp.931-940, 2013.

M. B. Zanjani, H. Kagdi, and C. Bird, Automatically recommending peer reviewers in modern code review, IEEE Transactions on Software Engineering, vol.42, issue.6, pp.530-543, 2016.

M. M. Rahman, C. K. Roy, and J. A. Collins, Correct: Code reviewer recommendation in GitHub based on cross-project and technology experience, 2016 IEEE/ACM 38th International Conference on Software Engineering Companion (ICSE-C), pp.222-231, 2016.

C. Hannebauer, M. Patalas, S. Stünkel, and V. Gruhn, Automatically recommending code reviewers based on their expertise: An empirical comparison, Proceedings of the 31st IEEE/ACM International Conference on Automated Software Engineering, ser. ASE 2016, pp.99-110, 2016.

G. Jeong, S. Kim, T. Zimmermann, and K. Yi, Improving code review by predicting reviewers and acceptance of patches, Research on Software Analysis for Error-free Computing Center Tech-Memo, pp.1-18, 2009.

Y. Yu, H. Wang, G. Yin, and C. X. Ling, Reviewer recommender of pull-requests in GitHub, 2014 IEEE International Conference on Software Maintenance and Evolution, pp.609-612, 2014.

, Who should review this pull-request: Reviewer recommendation to expedite crowd collaboration, 2014 21st Asia-Pacific Software Engineering Conference, vol.1, pp.335-342, 2014.

Z. Liao, Z. Wu, Y. Li, X. Fan, and J. Wu, Core-reviewer recommendation based on pull request topic model and collaborator social network, Soft Computing, 2019.

J. Jiang, J. He, and X. Chen, Coredevrec: Automatic core member recommendation for contribution evaluation, Journal of Computer Science and Technology, vol.30, issue.5, pp.998-1016, 2015.

Y. Yu, H. Wang, G. Yin, and T. Wang, Reviewer recommendation for pull-requests in GitHub: What can we learn from code review and bug assignment, Information and Software Technology, vol.74, p.2016

Z. Xia, H. Sun, J. Jiang, X. Wang, and X. Liu, A hybrid approach to code reviewer recommendation with collaborative filtering, 2017 6th International Workshop on Software Mining (SoftwareMining, pp.24-31, 2017.

C. Yang, X. Zhang, L. Zeng, Q. Fan, T. Wang et al., Revrec: A two-layer reviewer recommendation algorithm in pull-based development model, Journal of Central South University, vol.25, issue.5, pp.1129-1143, 2018.

,

V. Kovalenko, N. Tintarev, E. Pasynkov, C. Bird, and A. Bacchelli, Does reviewer recommendation help developers?, IEEE Transactions on Software Engineering, vol.46, issue.7, pp.710-731, 2020.

E. Mirsaeedi and P. C. Rigby, Mitigating turnover with code review recommendation: Balancing expertise, workload, and knowledge distribution, 2020 IEEE/ACM 42nd International Conference on Software Engineering (ICSE), pp.1183-1195, 2020.