Saved in:
Bibliographic Details
Main Authors: Qu, Bo, Wang, Zhurong, Gu, Minghao, Yagi, Daisuke, Zhao, Yang, Shan, Yinan, Zahradnik, Frank
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.19457
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912378212319232
author Qu, Bo
Wang, Zhurong
Gu, Minghao
Yagi, Daisuke
Zhao, Yang
Shan, Yinan
Zahradnik, Frank
author_facet Qu, Bo
Wang, Zhurong
Gu, Minghao
Yagi, Daisuke
Zhao, Yang
Shan, Yinan
Zahradnik, Frank
contents The burgeoning e-Commerce sector requires advanced solutions for the detection of transaction fraud. With an increasing risk of financial information theft and account takeovers, deep learning methods have become integral to the embedding of behavior sequence data in fraud detection. However, these methods often struggle to balance modeling capabilities and efficiency and incorporate domain knowledge. To address these issues, we introduce the multitask CNN behavioral Embedding Model for Transaction Fraud Detection. Our contributions include 1) introducing a single-layer CNN design featuring multirange kernels which outperform LSTM and Transformer models in terms of scalability and domain-focused inductive bias, and 2) the integration of positional encoding with CNN to introduce sequence-order signals enhancing overall performance, and 3) implementing multitask learning with randomly assigned label weights, thus removing the need for manual tuning. Testing on real-world data reveals our model's enhanced performance of downstream transaction models and comparable competitiveness with the Transformer Time Series (TST) model.
format Preprint
id arxiv_https___arxiv_org_abs_2411_19457
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-task CNN Behavioral Embedding Model For Transaction Fraud Detection
Qu, Bo
Wang, Zhurong
Gu, Minghao
Yagi, Daisuke
Zhao, Yang
Shan, Yinan
Zahradnik, Frank
Machine Learning
The burgeoning e-Commerce sector requires advanced solutions for the detection of transaction fraud. With an increasing risk of financial information theft and account takeovers, deep learning methods have become integral to the embedding of behavior sequence data in fraud detection. However, these methods often struggle to balance modeling capabilities and efficiency and incorporate domain knowledge. To address these issues, we introduce the multitask CNN behavioral Embedding Model for Transaction Fraud Detection. Our contributions include 1) introducing a single-layer CNN design featuring multirange kernels which outperform LSTM and Transformer models in terms of scalability and domain-focused inductive bias, and 2) the integration of positional encoding with CNN to introduce sequence-order signals enhancing overall performance, and 3) implementing multitask learning with randomly assigned label weights, thus removing the need for manual tuning. Testing on real-world data reveals our model's enhanced performance of downstream transaction models and comparable competitiveness with the Transformer Time Series (TST) model.
title Multi-task CNN Behavioral Embedding Model For Transaction Fraud Detection
topic Machine Learning
url https://arxiv.org/abs/2411.19457