Jie Yang1,2, Ning Ma1
1Chongqing College of International Business and Economics, Chongqing, China
2Pathumthani University, Bangkok, Thailand
Big data technology plays an important role in information collection, collation, analysis and refining. It also plays an important role in the application of information technology in university library. This paper uses big data technology to mine the behavior of hidden readers in structured and semi-structured data information, and find the needs of hidden readers, so as to improve the optimal allocation of library services, resources and readers' needs. The results show that the maximum consultation times of Library B is 6425, and the minimum consultation times of library A is 5316.
Big Data, Library, Information Technology, Digital Service
Jie Yang, Ning Ma. The Prospect of Application and Future Development of Library Information Technology in the Era of Big Data. International Journal of Frontiers in Sociology (2021), Vol. 3, Issue 16: 132-137. https://doi.org/10.25236/IJFS.2021.031620.
 Li S, Hao Z, Ding L, et al. Research on the application of information technology of Big Data in Chinese digital library. Library Management, 2019, 40(8/9):518-531.
 Han T, Zhang Y. Comment and Analysis on the Major National Strategies of Cyberspace. World Scientific Research Journal, 2020, 6(5):275-281.
 Robertson J. Organizational culture and public diplomacy in the digital sphere: The case of South Korea. Asia & the Pacific Policy Studies, 2018, 5(3):672-682.
 Hui X. Challenges and Countermeasures of Management Accounting in the Era of Big Data. World Scientific Research Journal, 2019, 5(10):115-121.
 Yao X, Sun J. Innovation and Practice of Educational Model and Method on Electronic Information Major in Polytechnic Colleges. International Journal of Social Science and Education Research, 2019, 2(10):16-19.
 Liu Y. Optimization of Conditional Random Field Model Based on Circular Neural Network. World Scientific Research Journal, 2019, 5(7):32-38.
 Liang B. The Study and Application of the New Control Layer for Enterprise-Class Web Applications. 2017, 28(6):151-162.
 Zhang J, Sun Y, Yao C. Semantically linking events for massive scientific literature research. The Electronic Library, 2017, 35(4):724-744.
 Xu Y, Yin C, Zou X, et al. A high accurate automated first‐break picking method for seismic records from high‐density acquisition in areas with a complex surface. Geophysical Prospecting, 2020, 68(4):1228-1252.
 Visuwasam L M M, Raj D P. A distributed intelligent mobile application for analyzing travel big data analytics. Peer-to-Peer Networking and Applications, 2020, 13(6):2036-2052.
 Teasley S D. Learning analytics: where information science and the learning sciences meet. New library world, 2019, 120(1-2):59-73.
 Cervone H F. Evaluating social media presence: A practical application of big data and analytics in information organizations. Digital Library Perspectives, 2017, 33(1):2-7.