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Bibliographic Details
Main Authors: Carreau, Matthieu, Naveiro, Roi, Caballero, William N.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.04480
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author Carreau, Matthieu
Naveiro, Roi
Caballero, William N.
author_facet Carreau, Matthieu
Naveiro, Roi
Caballero, William N.
contents Research in adversarial machine learning (AML) has shown that statistical models are vulnerable to maliciously altered data. However, despite advances in Bayesian machine learning models, most AML research remains concentrated on classical techniques. Therefore, we focus on extending the white-box model poisoning paradigm to attack generic Bayesian inference, highlighting its vulnerability in adversarial contexts. A suite of attacks are developed that allow an attacker to steer the Bayesian posterior toward a target distribution through the strategic deletion and replication of true observations, even when only sampling access to the posterior is available. Analytic properties of these algorithms are proven and their performance is empirically examined in both synthetic and real-world scenarios. With relatively little effort, the attacker is able to substantively alter the Bayesian's beliefs and, by accepting more risk, they can mold these beliefs to their will. By carefully constructing the adversarial posterior, surgical poisoning is achieved such that only targeted inferences are corrupted and others are minimally disturbed.
format Preprint
id arxiv_https___arxiv_org_abs_2503_04480
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Poisoning Bayesian Inference via Data Deletion and Replication
Carreau, Matthieu
Naveiro, Roi
Caballero, William N.
Machine Learning
Research in adversarial machine learning (AML) has shown that statistical models are vulnerable to maliciously altered data. However, despite advances in Bayesian machine learning models, most AML research remains concentrated on classical techniques. Therefore, we focus on extending the white-box model poisoning paradigm to attack generic Bayesian inference, highlighting its vulnerability in adversarial contexts. A suite of attacks are developed that allow an attacker to steer the Bayesian posterior toward a target distribution through the strategic deletion and replication of true observations, even when only sampling access to the posterior is available. Analytic properties of these algorithms are proven and their performance is empirically examined in both synthetic and real-world scenarios. With relatively little effort, the attacker is able to substantively alter the Bayesian's beliefs and, by accepting more risk, they can mold these beliefs to their will. By carefully constructing the adversarial posterior, surgical poisoning is achieved such that only targeted inferences are corrupted and others are minimally disturbed.
title Poisoning Bayesian Inference via Data Deletion and Replication
topic Machine Learning
url https://arxiv.org/abs/2503.04480