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Main Authors: Kolicic, Benjamin, Caron, Alberto, Hicks, Chris, Mavroudis, Vasilios
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.09393
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author Kolicic, Benjamin
Caron, Alberto
Hicks, Chris
Mavroudis, Vasilios
author_facet Kolicic, Benjamin
Caron, Alberto
Hicks, Chris
Mavroudis, Vasilios
contents In this paper, we address the critical need for interpretable and uncertainty-aware machine learning models in the context of online learning for high-risk industries, particularly cyber-security. While deep learning and other complex models have demonstrated impressive predictive capabilities, their opacity and lack of uncertainty quantification present significant questions about their trustworthiness. We propose a novel pipeline for online supervised learning problems in cyber-security, that harnesses the inherent interpretability and uncertainty awareness of Additive Gaussian Processes (AGPs) models. Our approach aims to balance predictive performance with transparency while improving the scalability of AGPs, which represents their main drawback, potentially enabling security analysts to better validate threat detection, troubleshoot and reduce false positives, and generally make trustworthy, informed decisions. This work contributes to the growing field of interpretable AI by proposing a class of models that can be significantly beneficial for high-stake decision problems such as the ones typical of the cyber-security domain. The source code is available.
format Preprint
id arxiv_https___arxiv_org_abs_2411_09393
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Inherently Interpretable and Uncertainty-Aware Models for Online Learning in Cyber-Security Problems
Kolicic, Benjamin
Caron, Alberto
Hicks, Chris
Mavroudis, Vasilios
Machine Learning
In this paper, we address the critical need for interpretable and uncertainty-aware machine learning models in the context of online learning for high-risk industries, particularly cyber-security. While deep learning and other complex models have demonstrated impressive predictive capabilities, their opacity and lack of uncertainty quantification present significant questions about their trustworthiness. We propose a novel pipeline for online supervised learning problems in cyber-security, that harnesses the inherent interpretability and uncertainty awareness of Additive Gaussian Processes (AGPs) models. Our approach aims to balance predictive performance with transparency while improving the scalability of AGPs, which represents their main drawback, potentially enabling security analysts to better validate threat detection, troubleshoot and reduce false positives, and generally make trustworthy, informed decisions. This work contributes to the growing field of interpretable AI by proposing a class of models that can be significantly beneficial for high-stake decision problems such as the ones typical of the cyber-security domain. The source code is available.
title Inherently Interpretable and Uncertainty-Aware Models for Online Learning in Cyber-Security Problems
topic Machine Learning
url https://arxiv.org/abs/2411.09393