TY - GEN
T1 - Detecting and Mitigating Adversarial Perturbations to Improve E-Commerce Security
AU - Tariq, Usman
AU - Jaafar, Fehmi
AU - Malik, Yasir
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - E-commerce platforms face the critical challenge of adversary events, including fraudulent transactions and fake reviews, which can lead to significant financial and reputational damage. Addressing this, our research introduces a hybrid Deep Learning model, tailored for the detection of such adversarial activities. This innovative approach leverages spatial and sequential data processing capabilities, enhancing the identification of subtle adversarial manipulations across diverse e-commerce contexts. Our findings indicate a high detection rate of 93 percent for adversarial attacks, with precision, recall, and Matthews Correlation Coefficient metrics underscoring the model's efficacy. This work significantly contributes to e-commerce security by advancing the robustness of detection systems against a spectrum of adversarial threats, including account takeovers and deceptive reviews. While demonstrating a notable improvement over existing methods, our research also acknowledges the potential for evasion by sophisticated attacks, highlighting areas for future work in enhancing model resilience.
AB - E-commerce platforms face the critical challenge of adversary events, including fraudulent transactions and fake reviews, which can lead to significant financial and reputational damage. Addressing this, our research introduces a hybrid Deep Learning model, tailored for the detection of such adversarial activities. This innovative approach leverages spatial and sequential data processing capabilities, enhancing the identification of subtle adversarial manipulations across diverse e-commerce contexts. Our findings indicate a high detection rate of 93 percent for adversarial attacks, with precision, recall, and Matthews Correlation Coefficient metrics underscoring the model's efficacy. This work significantly contributes to e-commerce security by advancing the robustness of detection systems against a spectrum of adversarial threats, including account takeovers and deceptive reviews. While demonstrating a notable improvement over existing methods, our research also acknowledges the potential for evasion by sophisticated attacks, highlighting areas for future work in enhancing model resilience.
KW - Adversarial Deep Learning
KW - Data Normalization and Balancing
KW - E-Commerce Security
KW - Fraudulent Activity Detection
KW - Hybrid Deep Learning Models
UR - https://www.scopus.com/pages/publications/105003280405
U2 - 10.1109/BDCAT63179.2024.00058
DO - 10.1109/BDCAT63179.2024.00058
M3 - Conference contribution
AN - SCOPUS:105003280405
T3 - Proceedings - 2024 IEEE/ACM International Conference on Big Data Computing, Applications and Technologies, BDCAT 2024
SP - 334
EP - 341
BT - Proceedings - 2024 IEEE/ACM International Conference on Big Data Computing, Applications and Technologies, BDCAT 2024
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 11th IEEE/ACM International Conference on Big Data Computing, Applications and Technologies, BDCAT 2024
Y2 - 16 December 2024 through 19 December 2024
ER -