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Fraud detection using decision tree algorithm to curb identity theft
Conference proceeding   Peer reviewed

Fraud detection using decision tree algorithm to curb identity theft

Tao Hai, Jincheng Zhou, Oluwakemi A Ajoboh, Timothy Olatunji, Xiaoshan Zhou, Celestine Iwendi and Boluwatife Oyesola
Proceedings of ICACTCE'23 — The International Conference on Advances in Communication Technology and Computer Engineering New Artificial Intelligence and the Internet of Things Based Perspective and Solutions, pp.351-360
Lecture Notes in Networks and Systems, 735
ICACTCE23 - International Conference on Advances in Communication Technology and Computer Engineering (Bolton, United Kingdom, 24/02/2023–25/02/2023)
24/09/2023

Abstract

F1-Score recall precision decision tree algorithm fraud detection Identity Theft
Identity theft is a growing concern that can cause significant financial and emotional harm to individuals. One way to detect and prevent identity theft is by using machine learning algorithms, such as decision tree. In this study, we investigate the effectiveness of using a decision tree algorithm in detecting and preventing identity theft. A dataset consisting of personal information, as well as information on suspicious activity, was collected from a financial institution. The dataset included a total of 284807 rows of data and 30 columns. The decision tree algorithm was implemented using the Python programming language and the scikit-learn library. The algorithm was trained on the training set and used to classify new cases as either fraudulent or non-fraudulent. The performance of the decision tree algorithm was evaluated using several performance metrics such as accuracy, precision, recall and F1-score. Results showed that the decision tree algorithm was effective in detecting and preventing identity theft, with an overall accuracy of 99%. These findings demonstrate the potential of using decision tree algorithms in detecting and preventing identity theft, which can help to curb the increasing problem of identity theft and protect individuals from financial and emotional harm.
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