This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Stieglitz, S., Mirbabaie, M., Ross, B., & Neuberger, C. (2018). Social media analytics–Challenges in topic discovery, data collection, and data preparation. International journal of information management, 39, 156-168.StieglitzS.MirbabaieM.RossB.NeubergerC. (2018). Social media analytics–Challenges in topic discovery, data collection, and data preparation. International journal of information management, 39, 156-168.Search in Google Scholar
Zhao, Y., & Zhang, J. (2017). Consumer health information seeking in social media: a literature review. Health Information & Libraries Journal, 34(4), 268-283.ZhaoY.ZhangJ. (2017). Consumer health information seeking in social media: a literature review. Health Information & Libraries Journal, 34(4), 268-283.Search in Google Scholar
Chen, E., Lerman, K., & Ferrara, E. (2020). Tracking social media discourse about the covid-19 pandemic: Development of a public coronavirus twitter data set. JMIR public health and surveillance, 6(2), e19273.ChenE.LermanK.FerraraE. (2020). Tracking social media discourse about the covid-19 pandemic: Development of a public coronavirus twitter data set. JMIR public health and surveillance, 6(2), e19273.Search in Google Scholar
Allcott, H., & Gentzkow, M. (2017). Social media and fake news in the 2016 election. Journal of economic perspectives, 31(2), 211-236.AllcottH.GentzkowM. (2017). Social media and fake news in the 2016 election. Journal of economic perspectives, 31(2), 211-236.Search in Google Scholar
Freitag, M., Bandle, M., Schmidt, T., Kemper, A., & Neumann, T. (2020). Adopting worst-case optimal joins in relational database systems. Proceedings of the VLDB Endowment, 13(12), 1891-1904.FreitagM.BandleM.SchmidtT.KemperA.NeumannT. (2020). Adopting worst-case optimal joins in relational database systems. Proceedings of the VLDB Endowment, 13(12), 1891-1904.Search in Google Scholar
Dimitriu, C. (2023). The difference between relational and non-relational databases in programming. In Conferinţa tehnico-ştiinţifică a studenţilor, masteranzilor şi doctoranzilor (Vol. 4, pp. 332-336).DimitriuC. (2023). The difference between relational and non-relational databases in programming. In Conferinţa tehnico-ştiinţifică a studenţilor, masteranzilor şi doctoranzilor (Vol. 4, pp. 332-336).Search in Google Scholar
Gaulton, A., Hersey, A., Nowotka, M., Bento, A. P., Chambers, J., Mendez, D., … & Leach, A. R. (2017). The ChEMBL database in 2017.Nucleic acids research, 45(D1), D945-D954.GaultonA.HerseyA.NowotkaM.BentoA. P.ChambersJ.MendezD.LeachA. R. (2017). The ChEMBL database in 2017.Nucleic acids research, 45(D1), D945-D954.Search in Google Scholar
Stoffel, M. A., Nakagawa, S., & Schielzeth, H. (2017). rptR: Repeatability estimation and variance decomposition by generalized linear mixed-effects models. Methods in ecology and evolution, 8(11), 1639-1644.StoffelM. A.NakagawaS.SchielzethH. (2017). rptR: Repeatability estimation and variance decomposition by generalized linear mixed-effects models. Methods in ecology and evolution, 8(11), 1639-1644.Search in Google Scholar
Kuo, T. T., Kim, H. E., & Ohno-Machado, L. (2017). Blockchain distributed ledger technologies for biomedical and health care applications. Journal of the American Medical Informatics Association, 24(6), 1211-1220.KuoT. T.KimH. E.Ohno-MachadoL. (2017). Blockchain distributed ledger technologies for biomedical and health care applications. Journal of the American Medical Informatics Association, 24(6), 1211-1220.Search in Google Scholar
Dorri, A., Steger, M., Kanhere, S. S., & Jurdak, R. (2017). Blockchain: A distributed solution to automotive security and privacy. IEEE communications magazine, 55(12), 119-125.DorriA.StegerM.KanhereS. S.JurdakR. (2017). Blockchain: A distributed solution to automotive security and privacy. IEEE communications magazine, 55(12), 119-125.Search in Google Scholar
Coronel, C., & Morris, S. (2019). Database systems: design, implementation and management.Cengage learning.CoronelC.MorrisS. (2019). Database systems: design, implementation and management.Cengage learning.Search in Google Scholar
Ren, J., Liu, P. J., Fertig, E., Snoek, J., Poplin, R., Depristo, M., & Lakshminarayanan, B. (2019). Likelihood ratios for out-of-distribution detection. Advances in neural information processing systems, 32.RenJ.LiuP. J.FertigE.SnoekJ.PoplinR.DepristoM.LakshminarayananB. (2019). Likelihood ratios for out-of-distribution detection. Advances in neural information processing systems, 32.Search in Google Scholar
Li, Q., Diao, Y., Chen, Q., & He, B. (2022, May). Federated learning on non-iid data silos: An experimental study. In 2022 IEEE 38th international conference on data engineering (ICDE) (pp. 965-978). IEEE.LiQ.DiaoY.ChenQ.HeB. (2022, May). Federated learning on non-iid data silos: An experimental study. In 2022 IEEE 38th international conference on data engineering (ICDE) (pp. 965-978). IEEE.Search in Google Scholar
Francisco, K., & Swanson, D. (2018). The supply chain has no clothes: Technology adoption of blockchain for supply chain transparency. Logistics, 2(1), 2.FranciscoK.SwansonD. (2018). The supply chain has no clothes: Technology adoption of blockchain for supply chain transparency. Logistics, 2(1), 2.Search in Google Scholar
Schober, P., Boer, C., & Schwarte, L. A. (2018). Correlation coefficients: appropriate use and interpretation. Anesthesia & analgesia, 126(5), 1763-1768.SchoberP.BoerC.SchwarteL. A. (2018). Correlation coefficients: appropriate use and interpretation. Anesthesia & analgesia, 126(5), 1763-1768.Search in Google Scholar
Androulaki, E., Barger, A., Bortnikov, V., Cachin, C., Christidis, K., De Caro, A., & Yellick, J. (2018, April). Hyperledger fabric: a distributed operating system for permissioned blockchains. In Proceedings of the thirteenth EuroSys conference (pp. 1-15).AndroulakiE.BargerA.BortnikovV.CachinC.ChristidisK.De CaroA.YellickJ. (2018, April). Hyperledger fabric: a distributed operating system for permissioned blockchains. In Proceedings of the thirteenth EuroSys conference (pp. 1-15).Search in Google Scholar
Liu, W., Wang, X., Owens, J., & Li, Y. (2020). Energy-based out-of-distribution detection. Advances in neural information processing systems, 33, 21464-21475.LiuW.WangX.OwensJ.LiY. (2020). Energy-based out-of-distribution detection. Advances in neural information processing systems, 33, 21464-21475.Search in Google Scholar
Li, T., Sahu, A. K., Zaheer, M., Sanjabi, M., Talwalkar, A., & Smith, V. (2020). Federated optimization in heterogeneous networks. Proceedings of Machine learning and systems, 2, 429-450.LiT.SahuA. K.ZaheerM.SanjabiM.TalwalkarA.SmithV. (2020). Federated optimization in heterogeneous networks. Proceedings of Machine learning and systems, 2, 429-450.Search in Google Scholar
Liu, Z., Miao, Z., Zhan, X., Wang, J., Gong, B., & Yu, S. X. (2019). Large-scale long-tailed recognition in an open world. In Proceedings of the IEEE/CVF conference on computer vision and pattern recognition (pp. 2537-2546).LiuZ.MiaoZ.ZhanX.WangJ.GongB.YuS. X. (2019). Large-scale long-tailed recognition in an open world. In Proceedings of the IEEE/CVF conference on computer vision and pattern recognition (pp. 2537-2546).Search in Google Scholar
Lee, K., Lam, M., Pedarsani, R., Papailiopoulos, D., & Ramchandran, K. (2017). Speeding up distributed machine learning using codes. IEEE Transactions on Information Theory, 64(3), 1514-1529.LeeK.LamM.PedarsaniR.PapailiopoulosD.RamchandranK. (2017). Speeding up distributed machine learning using codes. IEEE Transactions on Information Theory, 64(3), 1514-1529.Search in Google Scholar
Verbraeken, J., Wolting, M., Katzy, J., Kloppenburg, J., Verbelen, T., & Rellermeyer, J. S. (2020). A survey on distributed machine learning. Acm computing surveys (csur), 53(2), 1-33.VerbraekenJ.WoltingM.KatzyJ.KloppenburgJ.VerbelenT.RellermeyerJ. S. (2020). A survey on distributed machine learning. Acm computing surveys (csur), 53(2), 1-33.Search in Google Scholar
Dinh, T. T. A., Wang, J., Chen, G., Liu, R., Ooi, B. C., & Tan, K. L. (2017, May). Blockbench: A framework for analyzing private blockchains. In Proceedings of the 2017 ACM international conference on management of data (pp. 1085-1100).DinhT. T. A.WangJ.ChenG.LiuR.OoiB. C.TanK. L. (2017, May). Blockbench: A framework for analyzing private blockchains. In Proceedings of the 2017 ACM international conference on management of data (pp. 1085-1100).Search in Google Scholar
Tanenbaum, A. S., & Van Steen, M. (2017). Distributed systems (pp.298-303). Create Space Independent Publishing Platform.TanenbaumA. S.Van SteenM. (2017). Distributed systems (pp.298-303). Create Space Independent Publishing Platform.Search in Google Scholar
Dinh, T. T. A., Liu, R., Zhang, M., Chen, G., Ooi, B. C., & Wang, J. (2018). Untangling blockchain: A data processing view of blockchain systems. IEEE transactions on knowledge and data engineering, 30(7), 1366-1385.DinhT. T. A.LiuR.ZhangM.ChenG.OoiB. C.WangJ. (2018). Untangling blockchain: A data processing view of blockchain systems. IEEE transactions on knowledge and data engineering, 30(7), 1366-1385.Search in Google Scholar
Tian, F. (2017, June). A supply chain traceability system for food safety based on HACCP, blockchain & Internet of things. In 2017 International conference on service systems and service management (pp. 1-6). IEEE.TianF. (2017, June). A supply chain traceability system for food safety based on HACCP, blockchain & Internet of things. In 2017 International conference on service systems and service management (pp. 1-6). IEEE.Search in Google Scholar
Lu, Y., Huang, X., Dai, Y., Maharjan, S., & Zhang, Y. (2019). Blockchain and federated learning for privacy-preserved data sharing in industrial IoT. IEEE Transactions on Industrial Informatics, 16(6), 4177-4186.LuY.HuangX.DaiY.MaharjanS.ZhangY. (2019). Blockchain and federated learning for privacy-preserved data sharing in industrial IoT. IEEE Transactions on Industrial Informatics, 16(6), 4177-4186.Search in Google Scholar
Tanwar, S., Parekh, K., & Evans, R. (2020). Blockchain-based electronic healthcare record system for healthcare 4.0 applications. Journal of Information Security and Applications, 50, 102407.TanwarS.ParekhK.EvansR. (2020). Blockchain-based electronic healthcare record system for healthcare 4.0 applications. Journal of Information Security and Applications, 50, 102407.Search in Google Scholar
Jiaming He,Qinliang Tan & Hanyu Lv. (2025). Data-driven climate resilience assessment for distributed energy systems using diffusion transformer and polynomial expansions. Applied Energy124957-124957.HeJiamingTanQinliangLvHanyu (2025). Data-driven climate resilience assessment for distributed energy systems using diffusion transformer and polynomial expansions. Applied Energy124957-124957.Search in Google Scholar
Jun Jin,Chenyan Hao & Yewen Chen. (2024). Composite quantile regression for a distributed system with non-randomly distributed data. Statistical Papers(1),1-1.JinJunHaoChenyanChenYewen (2024). Composite quantile regression for a distributed system with non-randomly distributed data. Statistical Papers(1),1-1.Search in Google Scholar
Ge Yong Feng,Wang Hua,Cao Jinli,Zhang Yanchun & Jiang Xiaohong. (2024). Privacy-preserving data publishing: an information-driven distributed genetic algorithm. World Wide Web(1).FengGe YongHuaWangJinliCaoYanchunZhangXiaohongJiang (2024). Privacy-preserving data publishing: an information-driven distributed genetic algorithm. World Wide Web(1).Search in Google Scholar
Kamal Maryam,Amin Shahzad,Ferooz Faria,Awan Mazhar Javed,Mohammed Mazin Abed,Al-Boridi Omar & Abdulkareem Karrar Hameed. (2022). Privacy-aware genetic algorithm based data security framework for distributed cloud storage.Microprocessors and Microsystems.MaryamKamalShahzadAminFariaFeroozJavedAwan MazharAbedMohammed MazinOmarAl-BoridiHameedAbdulkareem Karrar (2022). Privacy-aware genetic algorithm based data security framework for distributed cloud storage.Microprocessors and Microsystems.Search in Google Scholar