LGAICVDec 22, 2025

Machine Unlearning in the Era of Quantum Machine Learning: An Empirical Study

arXiv:2512.19253v21 citationsh-index: 8Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of data privacy and model adaptability for quantum machine learning practitioners, representing an incremental but important step in understanding unlearning in quantum systems.

This paper presents the first comprehensive empirical study of machine unlearning in hybrid quantum-classical neural networks, finding that quantum models can support effective unlearning but outcomes depend on circuit depth, entanglement structure, and task complexity, with certain methods like EU-k, LCA, and Certified Unlearning providing the best balance across metrics.

We present the first comprehensive empirical study of machine unlearning (MU) in hybrid quantum-classical neural networks. While MU has been extensively explored in classical deep learning, its behavior within variational quantum circuits (VQCs) and quantum-augmented architectures remains largely unexplored. First, we adapt a broad suite of unlearning methods to quantum settings, including gradient-based, distillation-based, regularization-based and certified techniques. Second, we introduce two new unlearning strategies tailored to hybrid models. Experiments across Iris, MNIST, and Fashion-MNIST, under both subset removal and full-class deletion, reveal that quantum models can support effective unlearning, but outcomes depend strongly on circuit depth, entanglement structure, and task complexity. Shallow VQCs display high intrinsic stability with minimal memorization, whereas deeper hybrid models exhibit stronger trade-offs between utility, forgetting strength, and alignment with retrain oracle. We find that certain methods, e.g. EU-k, LCA, and Certified Unlearning, consistently provide the best balance across metrics. These findings establish baseline empirical insights into quantum machine unlearning and highlight the need for quantum-aware algorithms and theoretical guarantees, as quantum machine learning systems continue to expand in scale and capability. We publicly release our code at: https://github.com/CrivoiCarla/HQML.

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