The Impact of Big Data on Fraud Investigations

The Impact of Big Data on Fraud Investigations

Authors

  • Ayusha K
  • Hardik Parmar
  • Bhaskar Chhangani,
  • Atul Kamble

Keywords:

machine learning algorithms, use of big data, big data analytics, machine learning, fraud detection

Abstract

In several sectors, including finance, healthcare, and insurance, fraud is a major issue. Big data analytics has become a potent instrument for identifying and thwarting fraudulent activities. Big data analytics may assist businesses in finding patterns and anomalies in huge, complex data sets that may be signs of fraudulent activity. These patterns and anomalies can be found by utilizing cutting-edge machine learning algorithms and statistical models. Data gathering, preprocessing, feature engineering, model training, and model validation are all steps in the process. Utilizing different kinds of data, including financial data, user activity data, and social network data, organizations can create scam detection algorithms. However, using big data for fraud identification may present issues with data protection, model interpretability, and scale. However, big data analytics can greatly lower the incidence of fraud in a variety of sectors with the right tools and knowledge.

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References

Chen, H., Chiang, R. H., & Storey, V. C. (2012). Analytics and business intelligence: From large data to huge effect. Quarterly MIS, 36(4), 1165-1188. (Periodical style)

Phua, C., Lee, V., Smith-Miles, & Gayler. (2010). A thorough analysis of studies on fraud detection using data mining. Preprint for arXiv is 1009.6119. (Periodical style)

Bhattacharya, S., & Chakraborty, D. (2015). A study of financial fraud detection strategies. International Journal of Computer Applications, 121(4), 1-7. (Periodical style)

Apte, C., & Hong, T. W. (2013). Meta-learning for credit card fraud detection: Problems and first findings. In Information Sciences, 237, 82-98. (Book style)

Chen, K., Zhou, S., Zhang, L., & Xie, S. (2016). A fraud detection model built on the enhanced SVM algorithm and feature selection. International Journal of Hybrid Information Technology, 9(11), 1-8. (Periodical style)

Wang, Y., Yao, J., Li, Q., & Li, W. (2017). Use data mining and machine learning to detect insurance fraud. Journal of Intelligent & Fuzzy Systems, 32(3), 2373-2380. (Periodical style)

Xie, W., & Xu, X. (2017). A sophisticated decision tree algorithm-based fraud detection model for online shopping. Journal of Ambient Intelligence and Humanized Computing, 8(4), 629-638. (Periodical style)

Basha, S. S., & Al-Zoubi, R. H. (2021). A review of big data analytics for fraud detection in healthcare systems. (Book style with paper title and authors)

Basha, S. S., & Al-Zoubi, R. H. (2020). A comprehensive review of fraud detection techniques and algorithms for big data analytics. (Book style with paper title and authors)

Aggarwal, R., & Gopal, D. J. (2018). Fraud detection in financial transactions using big data analytics. (Book style with paper title and authors)

Liu, Y., Chen, X., & Zhang, L. (2017). Using big data analytics to detect fraud in online reviews. (Periodical style—Submitted for publication)

Zhang, K., Liu, Y., & Zhao, S. (2021). A novel fraud detection framework using big data analytics in the banking industry. (Periodical style—Accepted for publication)

J. Smith, "The impact of social media on interpersonal communication (Periodical style—Accepted for publication)," Communication Quarterly, to be published.

H. Kim and L. Lee, "The role of technology in enhancing customer experience (Periodical style—Submitted for publication)," Journal of Business Research, submitted for publication.

A. Johnson, "The impact of corporate culture on employee performance (Book style with paper title and editor)," in Organizational Culture and Performance, M. Brown, Ed. New York: Routledge, 2016, pp. 45-67.

R. Lee, "Exploring the benefits of mindfulness meditation in the workplace (Periodical style—Accepted for publication)," Journal of Occupational Health Psychology, to be published.

C. Davis and P. Taylor, "The effectiveness of online learning in higher education (Periodical style—Submitted for publication)," Educational Technology Research and Development, submitted for publication.

S. Jackson and M. Williams, "The impact of emotional intelligence on leadership effectiveness (Book style)," in The Handbook of Emotional Intelligence, D. Goleman, Ed. New York: Bantam Books, 2005, pp. 267-289.

T. Brown and J. Johnson, "A comparative study of leadership styles in the public and private sectors (Periodical style—Accepted for publication)," Public Administration Review, to be published.

M. Perez and R. Singh, "The impact of artificial intelligence on the job market (Book style with paper title and editor)," in The Future of Work, J. Smith, Ed. London: Palgrave Macmillan, 2019, pp. 89-106.

Additional Files

Published

30-05-2023

How to Cite

Ayusha K, Hardik Parmar, Bhaskar Chhangani, & Atul Kamble. (2023). The Impact of Big Data on Fraud Investigations. Vidhyayana - An International Multidisciplinary Peer-Reviewed E-Journal - ISSN 2454-8596, 8(si7), 444–460. Retrieved from https://vidhyayanaejournal.org/journal/article/view/836
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