Journal ArticleOpen Access
Securing transactions: a hybrid dependable ensemble machine learning model using IHT-LR and grid search
Author Affiliations
International University of Business Agriculture and Technology, Gazipur Agricultural University, University of Frontier Technology, Bangladesh, Deakin University, ...
Published InCybersecurity
Year2024
Citations36
Abstract
Abstract Financial institutions and businesses face an ongoing challenge from fraudulent transactions, prompting the need for effective detection methods. Detecting credit card fraud is crucial for identifying and preventing unauthorized transactions. While credit card fraud incidents are relatively rare, they can result in substantial financial losses, particularly due to the high monetary value associated with fraudulent transactions. Timely detection of fraud enables investigators to take swift actions to mitigate further losses. However, the investigation process is often time-consuming, limiting the number of alerts that can be thoroughly examined each day. Therefore, the primary objective of a fraud detection model is to provide accurate alerts while minimizing false alarms and missed fraud cases. In this paper, we introduce a state-of-the-art hybrid…
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