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Hybrid approach for deception tracing in smart cities using LR and n-fold intelligent machine learning techniques

Author

Listed:
  • Kamta Nath Mishra
  • Ved Prakash Mishra
  • Shashwat Saket
  • Shivam Prakash Mishra

Abstract

One of the fiendishly difficult tasks to perform in this computational era is deceit detection in credit and debit cards. In the current online and digital era recognising authentic identities is important for e-commerce websites so that genuine and fraudulent people could be segregated efficiently. In this paper, logistic regression (LR) and n-fold intelligent machine learning (IML) techniques are used for preventing and detecting the fraud in cloud and IoT connected surroundings. During experimental analysis, authors observed that the methodology proposed in this paper is reliable, accurate, and efficient for identifying the fraud in cloud and IoT-based surroundings of smart city societies.

Suggested Citation

  • Kamta Nath Mishra & Ved Prakash Mishra & Shashwat Saket & Shivam Prakash Mishra, 2022. "Hybrid approach for deception tracing in smart cities using LR and n-fold intelligent machine learning techniques," International Journal of Management Practice, Inderscience Enterprises Ltd, vol. 15(4), pages 460-487.
  • Handle: RePEc:ids:ijmpra:v:15:y:2022:i:4:p:460-487
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