Sirion Vittayakorn. Enhancing auto insurance fraud detection using convolutional neural networks. (). King Mongkut's University of Technology North Bangkok. Central Library. : , 2024.
Enhancing auto insurance fraud detection using convolutional neural networks
Abstract:
With the increasing number of vehicles in the global
fleet, the size of the auto insurance market is projected to reach
$1.3 billion USD by 2030. While this growth in the issuance
of auto insurance policies brings prosperity to the industry, it
also amplifies the risk of fraudulent activities. These fraudulent
practices have a significant impact on the industry, resulting in
the loss of billions of USD annually. Despite efforts to prevent
such activities, the expertise available is often overwhelmed
by the sheer volume of cases. In this paper, we propose an
auto insurance fraud detection system that leverages a onedimensional
Convolution Neural Network (1D-CNN) model in
combination with two data augmentation techniques, Synthetic
Minority Over-sampling Technique (SMOTE) and Conditional
Tabular Generative Adversarial Networks (CTGAN), to address
the class imbalance problem prevalent in fraud detection datasets.
Furthermore, we also employ Focal Loss as the loss function
in our deep learning model to effectively tackle the difficulty
in classifying the minority class. By combining the 1D-CNN
model with these imbalance manipulation techniques and the
Focal Loss function, we aim to enhance the systems ability to
accurately identify fraudulent activities, even in the presence of
highly imbalanced data. Our proposed approach seeks to mitigate
the financial losses incurred by the auto insurance industry due
to fraud and provide a more robust and efficient fraud detection
system.
King Mongkut's University of Technology North Bangkok. Central Library
Address:
BANGKOK
Email:
library@kmutnb.ac.th
Created:
2024
Modified:
2025-05-26
Issued:
2025-05-26
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BibliograpyCitation :
In IEEE Thailand Section (IEEE Computer Society Thailand Chapter) and Prince of Songkla University. College of Computing. The 21st International Joint Conference on Computer Science and Software Engineering (JCSSE 2024)) (pp.294-301). Phuket : Prince of Songkla University