Franciscu Sedda
Sonic: Fast and transferable data poisoning on clustering algorithms
Biggio, Battista;Roli, Fabio
2026-01-01
Abstract
Data poisoning attacks on clustering algorithms have received limited attention, with existing methods struggling to scale efficiently as dataset sizes and feature counts increase. These attacks typically require re-clustering the entire dataset multiple times to generate predictions and assess the attacker’s objectives, significantly hindering their scalability. This paper addresses these limitations by proposing Sonic, a novel genetic data poisoning attack that leverages incremental and scalable clustering algorithms, e.g., FISHDBC, as surrogates to accelerate poisoning attacks against graph-based and density-based clustering methods, such as HDBSCAN. We empirically demonstrate the effectiveness and efficiency of Sonic in poisoning the target clustering algorithms. We then conduct a comprehensive analysis of the factors affecting the scalability and transferability of poisoning attacks against clustering algorithms, and we conclude by examining the robustness of hyperparameters in our attack strategy Sonic.| File | Size | Format | |
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| sonic-editorial.pdf open access
Type: versione editoriale
Size 3.04 MB
Format Adobe PDF
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3.04 MB | Adobe PDF | View/Open |
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