Towards Trustworthy Web Attack Detection: An Uncertainty-Aware Ensemble Deep Kernel Learning Model
Yonghang Zhou, Hongyi Zhu, Yidong Chai, Yuanchun Jiang, Yezheng Liu

TL;DR
This paper introduces an uncertainty-aware ensemble deep kernel learning model for web attack detection that improves accuracy and trustworthiness by effectively estimating model uncertainty from data and model parameters.
Contribution
The study proposes a novel UEDKL framework combining deep kernel learning and attention-based ensemble to enhance web attack detection and uncertainty estimation.
Findings
Significant improvement in attack detection accuracy.
Effective estimation of model uncertainty.
Superior performance over benchmark models.
Abstract
Web attacks are one of the major and most persistent forms of cyber threats, which bring huge costs and losses to web application-based businesses. Various detection methods, such as signature-based, machine learning-based, and deep learning-based, have been proposed to identify web attacks. However, these methods either (1) heavily rely on accurate and complete rule design and feature engineering, which may not adapt to fast-evolving attacks, or (2) fail to estimate model uncertainty, which is essential to the trustworthiness of the prediction made by the model. In this study, we proposed an Uncertainty-aware Ensemble Deep Kernel Learning (UEDKL) model to detect web attacks from HTTP request payload data with the model uncertainty captured from the perspective of both data distribution and model parameters. The proposed UEDKL utilizes a deep kernel learning model to distinguish normal…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques · Web Application Security Vulnerabilities
MethodsBalanced Selection
