Machine learning based fraud detection For E-Commerce

Authors

  • Nikita Verma Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India
  • Kshiti Uboveja Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India
  • Manoj Kumar Singh Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India

DOI:

https://doi.org/10.59367/ijfiest.v2i1.13

Keywords:

Decision Tree, Machine Learning, Frauds,classification

Abstract

Since consumers first started conducting business online, frauds in e-commerce have been on the rise. People are vulnerable to harmful attacks because they readily divulge their personal information to strangers. Hacking is used to carry out these nefarious actions. A hacker is someone who uses the internet to access another person's private information in order to steal their money with only one click. We can employ machine learning-based techniques to stop this, such as supervised decision trees that classify data on fraudulent and legitimate transactions after being given it. When a tree is broken into child nodes, the fraudulence score calculation begins at the root node; other nodes are also divided.

 

Author Biographies

  • Nikita Verma, Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India

     

     

  • Kshiti Uboveja, Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India

     

     

  • Manoj Kumar Singh, Computer Science and Engineering, Shri Shankaracharya Institute of Professional Management and Technology, Raipur Chhattisgarh, India

     

     

References

AdiSaputra1,Suharjito, “Fraud Detection using Machine Learning in e-Commerceâ€, International Journal of Advanced Computer Science and Applications, Vol. 10, No. 9, 2019

Shayan Wangde, Raj Kheratkar, Zoheb Waghu, “Online Transaction Fraud Detection System Using Machine Learning & E-Commerceâ€, International Research Journal of Engineering and Technology (IRJET)

Ganesh Kumar.Nune and P.Vasanth Sena, “Novel Artificial Neural Networks and Logistic Approach for Detecting Credit Card Deceit,†International Journal of Computer Science and Network Security, Vol. 15, No. 9, Sep. 2015..

Ting, Kai Ming. "Confusion matrix." Encyclopedia of Machine Learning and Data Mining (2017): 260-260.

Suganuma, Masanori, Shinichi Shirakawa, and Tomoharu Nagao. "A genetic programming approach to designing convolutional neural network architectures." Proceedings of the Genetic and Evolutionary Computation Conference. ACM, 2017.

Ghosh S. & Reilly D. L. (1994) =Credit card fraud detection with a neuralnetwork‘. System Sciences, ISBN: 0-8186-5090-7, pp. 621 - 630.

Harrison, Paula A., et al. "Selecting methods for ecosystem service assessment: A decision tree approach." Ecosystem services 29 (2018): 481-498.

Randhawa, Kuldeep, et al. "Credit card fraud detection using AdaBoost and majority voting." IEEE access 6 (2018): 14277-14284.

Li, Tong, et al. "Differentially private Naïve Bayes learning over multiple data sources." Information Sciences 444 (2018): 89-104.

S. Agarwal, J. P. Patra, and Dr Suman Kumar Swarnkar, ‘Convolutional Neural Network Architecture Based Automatic Face Mask Detection’, International Journal of Health Sciences, no. SPECIAL ISSUE III, p. 623-629, 2022.

Suman Kumar Swarnkar, Gurpreet Singh Chhabra, Abhishek Guru, Bhawna Janghel, Prashant Kumar Tamrakar, Upasana Sinha, 'Underwater Image Enhancement Using D-Cnn', NeuroQuantology, vol. 20, no. 11, pp. 2157–2163, 2022.

Published

2023-01-15

Issue

Section

Articles

How to Cite

Machine learning based fraud detection For E-Commerce. (2023). International Journal of Futuristic Innovation in Engineering, Science and Technology (IJFIEST), 2(1), 4-7. https://doi.org/10.59367/ijfiest.v2i1.13