Machine Unlearning in the Era of Quantum Machine Learning: An Empirical Study
- URL: http://arxiv.org/abs/2512.19253v2
- Date: Tue, 23 Dec 2025 13:00:45 GMT
- Title: Machine Unlearning in the Era of Quantum Machine Learning: An Empirical Study
- Authors: Carla Crivoi, Radu Tudor Ionescu,
- Abstract summary: We present the first comprehensive empirical study of machine unlearning (MU) in hybrid quantum-classical neural networks.<n>We adapt a broad suite of unlearning methods to quantum settings, including gradient-based, distillation-based, regularization-based and certified techniques.<n>We find that quantum models can support effective unlearning, but outcomes depend strongly on circuit depth, entanglement structure, and task complexity.
- Score: 22.101976874889147
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
Related papers
- Quantum LEGO Learning: A Modular Design Principle for Hybrid Artificial Intelligence [63.39968536637762]
We introduce Quantum LEGO Learning, a learning framework that treats classical and quantum components as reusable, composable learning blocks.<n>Within this framework, a pre-trained classical neural network serves as a frozen feature block, while a VQC acts as a trainable adaptive module.<n>We develop a block-wise generalization theory that decomposes learning error into approximation and estimation components.
arXiv Detail & Related papers (2026-01-29T14:29:21Z) - A Primer on Quantum Machine Learning [0.0]
Quantum machine learning (QML) is a computational paradigm that seeks to apply quantum-mechanical resources to solve learning problems.<n>We outline the field's tensions between practicality and guarantees, access models and speedups, and classical baselines.<n>We aim to provide a friendly map of the QML landscape so that the reader can judge when-and under what assumptions-quantum approaches may offer real benefits.
arXiv Detail & Related papers (2025-11-20T01:47:21Z) - Towards Quantum Enhanced Adversarial Robustness with Rydberg Reservoir Learning [45.92935470813908]
Quantum computing reservoir (QRC) leverages the high-dimensional, nonlinear dynamics inherent in quantum many-body systems.<n>Recent studies indicate that perturbation quantums based on variational circuits remain susceptible to adversarials.<n>We investigate the first systematic evaluation of adversarial robustness in a QR based learning model.
arXiv Detail & Related papers (2025-10-15T12:17:23Z) - Entanglement and Classical Simulability in Quantum Extreme Learning Machines [0.0]
We investigate Quantum Extreme Learning Machines (QELMs), a quantum analogue of classical Extreme Learning Machines.<n>Our architecture combines dimensionality reduction (via PCA or Autoencoders), quantum state encoding, evolution under an XX Hamiltonian, and projective measurement.<n>We show that this performance enhancement correlates with the onset of entanglement, which improves the embedding of classical data.
arXiv Detail & Related papers (2025-09-08T16:43:37Z) - VQC-MLPNet: An Unconventional Hybrid Quantum-Classical Architecture for Scalable and Robust Quantum Machine Learning [50.95799256262098]
Variational quantum circuits (VQCs) hold promise for quantum machine learning but face challenges in expressivity, trainability, and noise resilience.<n>We propose VQC-MLPNet, a hybrid architecture where a VQC generates the first-layer weights of a classical multilayer perceptron during training, while inference is performed entirely classically.
arXiv Detail & Related papers (2025-06-12T01:38:15Z) - Harnessing Quantum Dynamics for Robust and Scalable Quantum Extreme Learning Machines [0.9546137427039093]
We show how tensor network methods can efficiently simulate quantum systems while controlling entanglement and mitigating exponential concentration.<n>Our findings indicate that exact simulation of quantum dynamics is not necessary for strong machine learning performance.
arXiv Detail & Related papers (2025-03-07T16:03:24Z) - Hybrid Quantum-Classical Reinforcement Learning in Latent Observation Spaces [0.36944296923226316]
Recent progress in quantum machine learning has sparked interest in using quantum methods to tackle classical control problems.<n>We propose to solve this dimensionality challenge by a classical autoencoder and a quantum agent together.<n>A series of numerical experiments are designed for a performance analysis of the latent-space learning method.
arXiv Detail & Related papers (2024-10-23T21:19:38Z) - Efficient Learning for Linear Properties of Bounded-Gate Quantum Circuits [62.46800898243033]
Recent progress in quantum learning theory prompts a question: can linear properties of a large-qubit circuit be efficiently learned from measurement data generated by varying classical inputs?<n>We prove that the sample complexity scaling linearly in $d$ is required to achieve a small prediction error, while the corresponding computational complexity may scale exponentially in d.<n>We propose a kernel-based method leveraging classical shadows and truncated trigonometric expansions, enabling a controllable trade-off between prediction accuracy and computational overhead.
arXiv Detail & Related papers (2024-08-22T08:21:28Z) - Expressive Quantum Supervised Machine Learning using Kerr-nonlinear
Parametric Oscillators [0.0]
Quantum machine learning with variational quantum algorithms (VQA) has been actively investigated as a practical algorithm in the noisy intermediate-scale quantum (NISQ) era.
Recent researches reveal that the data reuploading, which repeatedly encode classical data into quantum circuit, is necessary for obtaining the expressive quantum machine learning model.
We propose quantum machine learning with Kerrnon Parametric Hilberts (KPOs) as another promising quantum computing device.
arXiv Detail & Related papers (2023-05-01T07:01:45Z) - Quantum machine learning for image classification [39.58317527488534]
This research introduces two quantum machine learning models that leverage the principles of quantum mechanics for effective computations.
Our first model, a hybrid quantum neural network with parallel quantum circuits, enables the execution of computations even in the noisy intermediate-scale quantum era.
A second model introduces a hybrid quantum neural network with a Quanvolutional layer, reducing image resolution via a convolution process.
arXiv Detail & Related papers (2023-04-18T18:23:20Z) - Quantum Imitation Learning [74.15588381240795]
We propose quantum imitation learning (QIL) with a hope to utilize quantum advantage to speed up IL.
We develop two QIL algorithms, quantum behavioural cloning (Q-BC) and quantum generative adversarial imitation learning (Q-GAIL)
Experiment results demonstrate that both Q-BC and Q-GAIL can achieve comparable performance compared to classical counterparts.
arXiv Detail & Related papers (2023-04-04T12:47:35Z) - The Quantum Path Kernel: a Generalized Quantum Neural Tangent Kernel for
Deep Quantum Machine Learning [52.77024349608834]
Building a quantum analog of classical deep neural networks represents a fundamental challenge in quantum computing.
Key issue is how to address the inherent non-linearity of classical deep learning.
We introduce the Quantum Path Kernel, a formulation of quantum machine learning capable of replicating those aspects of deep machine learning.
arXiv Detail & Related papers (2022-12-22T16:06:24Z) - Recent Advances for Quantum Neural Networks in Generative Learning [98.88205308106778]
Quantum generative learning models (QGLMs) may surpass their classical counterparts.
We review the current progress of QGLMs from the perspective of machine learning.
We discuss the potential applications of QGLMs in both conventional machine learning tasks and quantum physics.
arXiv Detail & Related papers (2022-06-07T07:32:57Z) - Quantum Federated Learning with Quantum Data [87.49715898878858]
Quantum machine learning (QML) has emerged as a promising field that leans on the developments in quantum computing to explore large complex machine learning problems.
This paper proposes the first fully quantum federated learning framework that can operate over quantum data and, thus, share the learning of quantum circuit parameters in a decentralized manner.
arXiv Detail & Related papers (2021-05-30T12:19:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.