Abstract
While the phrase Big Data analytics is not only applicable for a certain realm of technology, diverse business segments like banking also benefit from the use of advanced mathematical and statistical models like predictive analysis, artificial intelligence, and data mining. If it is a query that is data volume generated in a bank or any financial institution is huge, it is absolutely a yes. As per the recent survey, it is observed that banks worldwide aren't just concentrating on improving the asset quality and fulfilling regulatory compliance but on the lookout for a digital convergence strategy to reach customers effectively in delivering services and products. As most of the data generated in internet banking and ATM transactions are unstructured accounting around for 2.5 quintillion bytes useful for fraud detection, risk management, and customer satisfaction, the use of trending Big Data Analytics methodology can be used to tackle the challenges and competition among banks. There are surplus advantages of Big Data strategy in the banking field and in this paper, we have made an analysis over Big Data Analytics on banking applications and their related concepts.
Publisher
Inventive Research Organization
Reference25 articles.
1. [1] Manish, P. M., Kasale, S., & Simon, A. D. (2018). Banking & big data analytics. IOSR Journal of Business and Management, 55-58.
2. [2] Smys, S., and Jennifer S. Raj. "Analysis of Deep Learning Techniques for Early Detection of Depression on Social Media Network-A Comparative Study." Journal of trends in Computer Science and Smart technology (TCSST) 3, no. 01 (2021): 24-39.
3. [3] Gupta, Sameer, Deepa Gupta, and Ruchika Bathla. "A Security Model for Enhancement of Social Engineering Process with Implementation of Multifactor Authentication." In International conference on Computer Networks, Big data and IoT, pp. 979-987. Springer, Cham, 2019.
4. [4] More, R., &Moily, Y. Big Data Analysis in Banking Sector. International Journal of Engineering Research and Applications.
5. [5] Joe, Mr C. Vijesh, and Jennifer S. Raj. "Location-based Orientation Context Dependent Recommender System for Users." Journal of trends in Computer Science and Smart technology (TCSST) 3, no. 01 (2021): 14-23.
Cited by
51 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献