QUANT-PHCRCVNov 21, 2024

Adversarial Data Poisoning Attacks on Quantum Machine Learning in the NISQ Era

arXiv:2411.14412v35 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses security risks for QML users in cloud settings, representing a first attempt in this context but is incremental as it adapts classical attack concepts to quantum systems.

The paper tackles the problem of data poisoning attacks on quantum machine learning (QML) models in the NISQ era by proposing a novel attack method called QUID, which achieves up to 92% accuracy degradation in model performance compared to baselines and remains effective against classical defenses.

With the growing interest in Quantum Machine Learning (QML) and the increasing availability of quantum computers through cloud providers, addressing the potential security risks associated with QML has become an urgent priority. One key concern in the QML domain is the threat of data poisoning attacks in the current quantum cloud setting. Adversarial access to training data could severely compromise the integrity and availability of QML models. Classical data poisoning techniques require significant knowledge and training to generate poisoned data, and lack noise resilience, making them ineffective for QML models in the Noisy Intermediate Scale Quantum (NISQ) era. In this work, we first propose a simple yet effective technique to measure intra-class encoder state similarity (ESS) by analyzing the outputs of encoding circuits. Leveraging this approach, we introduce a \underline{Qu}antum \underline{I}ndiscriminate \underline{D}ata Poisoning attack, QUID. Through extensive experiments conducted in both noiseless and noisy environments (e.g., IBM\_Brisbane's noise), across various architectures and datasets, QUID achieves up to $92\%$ accuracy degradation in model performance compared to baseline models and up to $75\%$ accuracy degradation compared to random label-flipping. We also tested QUID against state-of-the-art classical defenses, with accuracy degradation still exceeding $50\%$, demonstrating its effectiveness. This work represents the first attempt to reevaluate data poisoning attacks in the context of QML.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes