Voice analysis system for detection of vishing using deep learning
Keywords:
VoIP, fraud, fake phone numbers, telecomAbstract
For many years, telecom fraud has caused significant financial harm to Indian telecommunications users. Traditional approaches for identifying telecom fraud frequently center on boycotting of faux phone numbers. Attackers, on the other hand, could merely escape discernment by modifying their phone numbers, which is fairly straightforward with VoIP (Voice over IP).To address this issue, this method detects telecommunication fraud supporting the substance of a spoken language rather than merely the caller's sign. This paper collects chronicles of telecommunication deceit, above all, from press sources and social platforms. To make datasets, our planned model utilizes machine learning techniques to look at knowledge and opt for high-quality descriptions from antecedently gathered knowledge. After that, Natural language processing is employed to draw out characteristics from the text- based data. Then, for extra telecommunication fraud detection, criteria to acknowledge identical material within the same call are formed. To spot telecommunication fraud online, the system provides an associate degree android application that will be loaded on a customer's smartphone. Once an associate degree incoming fraud decision is answered, the program will dynamically measure the call's contents to sight fraud. Our findings demonstrate that the system will effectively safeguard clients.
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References
Jabbar, M. A. and S. B. Suharjito. “Fraud Detection Call Detail Record Using Machine Learning in Telecommunications Company.” Advances in Science, Technology and Engineering Systems Journal 5 (2020): 63-69.
J. Brownlee " A Gentle Introduction to Long Short-Term Memory Networks", July 7, 2021 in Long Short-Term Memory Networks.
E. Ma "Data Augmentation library for text", Towards Data Science, Apr 21, 2019.
J. Xing , M. Yu , S. Wang ,Y. Zhang , and Y. Ding - Automated Fraudulent Phone Call Recognition through Deep Learning, Wireless Communications and Mobile Computing Volume 2020 | Article ID 8853468.
Ting Sun.Miklos A. Vasarhelyi- Embracing Textual Data Analytics in Auditing with Deep Learning, The International Journal of Digital Accounting Research Vol. 18, 2018, pp. 49-67 ISSN: 2340-5058 Submitted December 2017 DOI: 10.4192/1577-8517-v18_3.
M. Swarnkar, N. Hubballi - SpamDetector: Detecting spam callers in Voice over Internet Protocol with graph anomalies, Security And Privacy, Volume2, Issue 1, 19 December 2018.
Zhao, Q., Chen, K., Li, T. et al. "Detecting telecommunication fraud by understanding the contents of a
call". Cybersecur 1, 8 (2018).
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