This work is licensed under the Creative Commons Attribution 4.0 International License.
Jian, Xu, Bo, et al. (2017). Emerging Trends for Microbiome Analysis: From Single-Cell Functional Imaging to Microbiome Big Data. Engineering, 66-70.Search in Google Scholar
Gao, X., Yang, F., Shang, C., et al. (2016). A review of control loop monitoring and diagnosis: Prospects of controller maintenance in big data era. Chinese Journal of Chemical Engineering, 952-962.Search in Google Scholar
Wang, Li, Weilin, et al. (2016). Random Bits Forest: a Strong Classifier/Regressor for Big Data. Scientific Reports, 30086.Search in Google Scholar
Yanbo, Huang, CHEN, et al. (2018). Agricultural remote sensing big data: Management and applications. Journal of Integrative Agriculture, 577.Search in Google Scholar
Li, S., Chen, J., Liu, C. (2022). Overview on the Development of Intelligent Methods for Mineral Resource Prediction under the Background of Geological Big Data. Minerals, 12, 616-61.Search in Google Scholar
Amedeo, D’Angiulli, Peter (2019). Retooling Computational Techniques for EEG-Based Neurocognitive Modeling of Children’s Data, Validity and Prospects for Learning and Education. Frontiers in Computational Neuroscience, 4.Search in Google Scholar
Bowman, R. L., Klemm, F., Akkari, L., et al. (2016). Macrophage Ontogeny Underlies Differences in Tumor-Specific Education in Brain Malignancies. Cell Reports, 2445-2459.Search in Google Scholar
Sheng, Y. B., Zhou, L., Key Laboratory of Broadband Wireless Communication and Sensor Network Technology, et al. (2017). Distributed secure quantum machine learning. Science Bulletin, 1025-1029.Search in Google Scholar
Jones, A. C., Shipman, S. A., Ogrinc, G. (2015). Key characteristics of successful quality improvement curricula in physician education: a realist review. BMJ Quality & Safety, 102-113.Search in Google Scholar
Hui, H. E., Zhen, Y., Tiezhu, M. I., et al. (2015). Seasonal and spatial distribution of ammonia-oxidizing microorganism communities in surface sediments from the East China Sea. Acta Oceanologica Sinica, 83-92.Search in Google Scholar
Shannon McSheffrey. E. Amanda McVitty. (2022). Treason and Masculinity in Medieval England: Gender, Law and Political Culture. Gender in the Middle Ages. Woodbridge: Boydell Press, 258. $99.00 (cloth). Journal of British Studies, 61(2), 477-478.Search in Google Scholar
Olayinka, O., Kekeh, M., Sheth-Chandra, M., et al. (2017). Big Data Knowledge in Global Health Education. Annals of Global Health, 676-681.Search in Google Scholar
Komro, K. A., Flay, B. R., Biglan, A., et al. (2016). Research design issues for evaluating complex multicomponent interventions in neighborhoods and communities. Translational Behavioral Medicine, 153-159.Search in Google Scholar
Fan, P., University S. J. (2016). Coping with the Big Data: Convergence of Communications, Computing and Storage. China Communications, 203-207.Search in Google Scholar
JDF Peugh. (2020). “How Well Does Your Structural Equation Model Fit Your Data?”: Is Marcoulides and Yuan’s Equivalence Test the Answer? CBE - Life Sciences Education, 19, es5.Search in Google Scholar
Zenab, Elfzzani, T’ng, et al. (2019). Education of family members to support weaning to solids and nutrition in infants born preterm. Cochrane Database of Systematic Reviews, CD012240.Search in Google Scholar
Wei, H. T., YY, et al. (2015). A k-d tree-based algorithm to parallelize Kriging interpolation of big spatial data. GISCI REMOTE SENS, 40-57.Search in Google Scholar
Sandamali, S., Kantakumar, L. N., Sivanantharajah, S., et al. (2018). Remote Sensing Data and SLEUTH Urban Growth Model: As Decision Support Tools for Urban Planning. Chinese Geographical Science, 274-286.Search in Google Scholar
Li, S., Chen, J., Liu, C. (2022). Overview on the Development of Intelligent Methods for Mineral Resource Prediction under the Background of Geological Big Data. Minerals, 616-616.Search in Google Scholar
Zhihua, Li, Zianfei, et al. (2016). Research on architecture of security video surveillance network cascade system with big data. Military Operations Research, 77-81.Search in Google Scholar
Passos, I. C., Mwangi, B., Kapczinski, F. (2016). Big data analytics and machine learning: 2015 and beyond. The Lancet Psychiatry, 13-15.Search in Google Scholar
Cmg, B., Edd, M., Kkb, B., et al. (2021). The other side of “challenging learners”: Strategies for teaching and precepting the overachiever and high performer. American Journal of Health-System Pharmacy, 79(2), 17-22.Search in Google Scholar
Jones, A. C., Shipman, S. A., Ogrinc, G. (2015). Key characteristics of successful quality improvement curricula in physician education: a realist review. BMJ Quality & Safety, 24(1), 77-88.Search in Google Scholar
Henze, S. M., Fellmer, F., Wittenberg, S., et al. (2022). Digital adaptation of teaching disaster and deployment medicine under COVID-19 conditions: a comparative evaluation over 5 years. BMC Medical Education, 22(1), 1-9.Search in Google Scholar
Konstan, J. A., Walker, J. D., Brooks, D. C., et al. (2015). Teaching Recommender Systems at Large Scale. ACM Transactions on Computer-Human Interaction (TOCHI), 10.Search in Google Scholar
Tieniber, A. D., Readdy, et al. (2016). Remodeling neuroscience education in medical student training: how early exposure and mentorship are promoting student interest in neurology and neurosurgery. NEURAL REGEN RES, 1470.Search in Google Scholar
Chen, S. M., Sue, P. J. (2013). Constructing concept maps for adaptive learning systems based on data mining techniques. Expert Systems with Applications, 2746-2755.Search in Google Scholar
Xie, Y., Libing, W. U., Zhang, Y., et al. (2016). Efficient and Secure Authentication Scheme with Conditional Privacy-Preserving for VANETs. Chinese Journal of Electronics, 229-240.Search in Google Scholar
Honglan, L., & Wu, R. (2021). Study on problems and countermeasures of ideological and political teaching in colleges and universities under the background of new media era. Journal of Intelligent and Fuzzy Systems, 1-9.Search in Google Scholar