This work is licensed under the Creative Commons Attribution 4.0 International License.
Wamba, S. F., Angappa, G., Papadopoulos, T., et al. (2018). Big data analytics in logistics and supply chain management. International Journal of Logistics Management, 00-00.Search in Google Scholar
Zhang, Q., Yang, L. T., Chen, Z., et al. (2018). A survey on deep learning for big data. Information Fusion, 42, 146-157.Search in Google Scholar
Wang, Y., Kung, et al. (2018). Big data analytics: Understanding its capabilities and potential benefits for healthcare organizations. Technological Forecasting and Social Change.Search in Google Scholar
Zhang, N., Yang, P., Ren, J., et al. (2018). Synergy of Big Data and 5G Wireless Networks: Opportunities, Approaches, and Challenges. IEEE Wireless Communications, 25(1), 12-18.Search in Google Scholar
Liu, J., & Liu, L. (2019). Research on the Personalized Library Push System Based on the Big Data. Basic & Clinical Pharmacology & Toxicology, 124-S3.Search in Google Scholar
Wang, X., et al. (2016). Study on Resources Integration of Traditional Chinese Medicine Digital Library Based on Big Data. Basic & Clinical Pharmacology & Toxicology, 118(Suppl.1), 73-74.Search in Google Scholar
Saneja, B., & Rani, R. (2018). An integrated framework for anomaly detection in big data of medical wireless sensors. Modern Physics Letters B, 32(24), 1850283.Search in Google Scholar
Xiong, C., Baker, D., & Pietrantonio, P. V. (2021). A random small molecule library screen identifies novel antagonists of the kinin receptor from the cattle fever tick, Rhipicephalus microplus (Acari: Ixodidae). Pest Management Science.Search in Google Scholar
Attia, A. K., Taha, T., Kong, G., et al. (2021). Return to Play and Fracture Union After the Surgical Management of Jones Fractures in Athletes. A Systematic Review and Meta-analysis. The American Journal of Sports Medicine, Online First(12).Search in Google Scholar
Cao, L., Wang, Y. Q., Yu, T., et al. (2020). The effectiveness and safety of extracorporeal shock wave lithotripsy for the management of kidney stones: A protocol of systematic review and meta-analysis. Medicine, 99(38), e21910.Search in Google Scholar
Wheaton, K., & Murray, D. S. (2012). Why smart cities need smart libraries: Stories from the Alaskan frontier. KM World.Search in Google Scholar
Akers, K. G., Sferdean, F. C., Nicholls, N. H., et al. (2014). Building Support for Research Data Management: Biographies of Eight Research Universities. International Journal of Digital Curation, 9(2).Search in Google Scholar
Khadem Mohtaram, A. (2013). Classification, Formalization and Automatic Verification of Untraceability in RFID Protocols. Ophthalmology, 114(10), 1957-1957.Search in Google Scholar
Tisan, A., & Cirstea, M. (2013). SOM neural network design – A new Simulink library based approach targeting FPGA implementation. Mathematics & Computers in Simulation, 91(10), 134-149.Search in Google Scholar
Kim, G. (2011). A critical review of valuation studies to identify frameworks in library services. Library & Information Science Research, 33(2), 112-119.Search in Google Scholar
Baker, B. (2000). Can Library Service Survive in a Sea of Change? American Libraries, 31(4), 47-49.Search in Google Scholar
Isinkaye, F. O., Folajimi, Y. O., & Ojokoh, B. A. (2015). Recommendation systems: Principles, methods, and evaluation. Egyptian Informatics Journal, 16(3), 261-273.Search in Google Scholar
Kuo, J. J., & Zhang, Y. J. (2012). A Library Recommender System Using Interest Change over Time and Matrix Clustering. In The Outreach of Digital Libraries: A Globalized Resource Network (pp. 259-268). Springer Berlin Heidelberg.Search in Google Scholar
Knijnenburg, B. P., Sivakumar, S., & Wilkinson, D. (2016). Recommender Systems for Self-Actualization. In ACM Conference on Recommender Systems (pp. 11-14). ACM.Search in Google Scholar
Grunzke, R., Nagel, W. E., Hartmann, V., et al. (2017). Towards a Metadata-driven Multi-community Research Data Management Service. In International Workshop on Science Gateways 2016.Search in Google Scholar
Jones, S., Pryor, G., & Whyte, A. (2013). How to Develop Research Data Management Services - a guide for HEIs.Search in Google Scholar
Zaugg, H., & Rackham, S. (2016). Identification and development of patron personas for an academic library. Performance Measurement & Metrics, 17(2), 124-133.Search in Google Scholar
Zaugg, H. (2016). Using Persona Descriptions to Inform Library Space Design. In The Future of Library Space (pp. 335-358). Elerald Group Publishing Limited.Search in Google Scholar
A, C. T., B, R. J. S., A, S. A., et al. (2014). Research data management services in academic research libraries and perceptions of librarians. Library & Information Science Research, 36(2), 84-90.Search in Google Scholar
Yoon, A., & Schultz, T. (2017). Research Data Management Services in Academic Libraries in the US: A Content Analysis of Libraries’ Websites. College & Research Libraries, 78(7).Search in Google Scholar
Gao, L., Gan, Y., Yao, Z., et al. (2021). A user-knowledge dynamic pattern matching process and optimization strategy based on the expert knowledge recommendation system. Applied Intelligence, 1.Search in Google Scholar
Hejazi, R., Grime, A., Randolph, M., et al. (2021). A Bayesian machine learning approach to rapidly quantifying the fatigue probability of failure for steel catenary risers. Ocean engineering, 235.Search in Google Scholar
Vargas-Hakim, G. A., Mezura-Montes, E., & Acosta-Mesa, H. G. (2021). A Review on Convolutional Neural Networks Encodings for Neuroevolution. IEEE Transactions on Evolutionary Computation, PP(99), 1-1.Search in Google Scholar
Javier, C. B. (2022). Classification of Fermi-LAT unidentified gamma-ray sources using catboost gradient boosting decision trees. Monthly Notices of the Royal Astronomical Society, 2.Search in Google Scholar
Jian, L., Wang, Y., Wu, J., et al. (2020). Application of User-Based Collaborative Filtering Recommendation Technology on Logistics Platform. In International Conference on Business Intelligence and Financial Engineering.Search in Google Scholar
Cheng, F. (2016). Research on Collaborative Filtering Recommendation Technology Based on Users’ Interest Change in Agricultural E-commerce. Agriculture Network Information.Search in Google Scholar
Mayampurath, A., Parnianpour, Z., Richards, C. T., et al. (2021). Improving Prehospital Stroke Diagnosis Using Natural Language Processing of Paramedic Reports. Stroke, 52(8).Search in Google Scholar
Makridis, G., Mavrepis, P., & Kyriazis, D. (2022). A deep learning approach using natural language processing and time-series forecasting towards enhanced food safety. Machine Learning, 1-27.Search in Google Scholar
Xu, F., & Li, X. (2021). On the global existence and time-decay rates for a parabolic–hyperbolic model arising from chemotaxis. Communications in Contemporary Mathematics.Search in Google Scholar
Taverner, J., Vivancos, E., & Botti, V. (2020). A fuzzy appraisal model for affective agents adapted to cultural environments using the Pleasure and Arousal dimensions. Information Sciences, 546.Search in Google Scholar