Quantum feature-map learning with reduced resource overhead
- URL: http://arxiv.org/abs/2510.03389v1
- Date: Fri, 03 Oct 2025 18:00:00 GMT
- Title: Quantum feature-map learning with reduced resource overhead
- Authors: Jonas Jäger, Philipp Elsässer, Elham Torabian,
- Abstract summary: We introduce Quantum Feature-Map Learning via Analytic Iterative Reconstructions (Q-FLAIR)<n>Q-FLAIR reduces quantum resource overhead in iterative feature-map circuit construction.<n>We train a quantum model on a real IBM device in only four hours, surpassing 90% accuracy on the full-resolution MNIST dataset.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Current quantum computers require algorithms that use limited resources economically. In quantum machine learning, success hinges on quantum feature maps, which embed classical data into the state space of qubits. We introduce Quantum Feature-Map Learning via Analytic Iterative Reconstructions (Q-FLAIR), an algorithm that reduces quantum resource overhead in iterative feature-map circuit construction. It shifts workloads to a classical computer via partial analytic reconstructions of the quantum model, using only a few evaluations. For each probed gate addition to the ansatz, the simultaneous selection and optimization of the data feature and weight parameter is then entirely classical. Integrated into quantum neural network and quantum kernel support vector classifiers, Q-FLAIR shows state-of-the-art benchmark performance. Since resource overhead decouples from feature dimension, we train a quantum model on a real IBM device in only four hours, surpassing 90% accuracy on the full-resolution MNIST dataset (784 features, digits 3 vs 5). Such results were previously unattainable, as the feature dimension prohibitively drives hardware demands for fixed and search costs for adaptive ans\"atze. By rethinking feature-map learning beyond black-box optimization, this work takes a concrete step toward enabling quantum machine learning for real-world problems and near-term quantum computers.
Related papers
- AQER: a scalable and efficient data loader for digital quantum computers [62.40228216126285]
We develop AQER, a scalable AQL method that constructs the loading circuit by systematically reducing entanglement in target states.<n>We conduct systematic experiments to evaluate the effectiveness of AQER, using synthetic datasets, classical image and language datasets, and a quantum many-body state datasets with up to 50 qubits.
arXiv Detail & Related papers (2026-02-02T14:39:42Z) - A Triple-Hybrid Quantum Support Vector Machine Using Classical, Quantum Gate-based and Quantum Annealing-based Computing [0.0]
We show that a triple-hybrid quantum support vector machine can achieve higher precision than other support vector machines on complex quantum data.<n>For the complex data sets, the triple-hybrid version converges faster, requiring fewer circuit evaluations.
arXiv Detail & Related papers (2025-11-07T13:40:22Z) - Typical Machine Learning Datasets as Low-Depth Quantum Circuits [0.40329768057075643]
We develop an efficient algorithm for finding low-depth quantum circuits to load classical image data as quantum states.<n>We conduct systematic studies on the MNIST, Fashion-MNIST, CIFAR-10, and Imagenette datasets.
arXiv Detail & Related papers (2025-05-06T10:27:51Z) - Automating quantum feature map design via large language models [0.8009842832476994]
We propose an agentic system that autonomously generates, evaluates, and refines quantum feature maps using large language models.<n> Experiments on the MNIST dataset show that it can successfully discover and refine feature maps without human intervention.
arXiv Detail & Related papers (2025-04-10T02:27:45Z) - QCircuitBench: A Large-Scale Dataset for Benchmarking Quantum Algorithm Design [63.02824918725805]
Quantum computing is recognized for the significant speedup it offers over classical computing through quantum algorithms.<n>QCircuitBench is the first benchmark dataset designed to evaluate AI's capability in designing and implementing quantum algorithms.
arXiv Detail & Related papers (2024-10-10T14:24:30Z) - 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) - Q-gen: A Parameterized Quantum Circuit Generator [0.6062751776009752]
We introduce Q-gen, a high-level, parameterized quantum circuit generator incorporating 15 realistic quantum algorithms.<n>Q-gen is an open-source project that serves as the entrance for users with a classical computer science background to dive into the world of quantum computing.
arXiv Detail & Related papers (2024-07-26T12:22:40Z) - A Quantum-Classical Collaborative Training Architecture Based on Quantum
State Fidelity [50.387179833629254]
We introduce a collaborative classical-quantum architecture called co-TenQu.
Co-TenQu enhances a classical deep neural network by up to 41.72% in a fair setting.
It outperforms other quantum-based methods by up to 1.9 times and achieves similar accuracy while utilizing 70.59% fewer qubits.
arXiv Detail & Related papers (2024-02-23T14:09:41Z) - QuantumSEA: In-Time Sparse Exploration for Noise Adaptive Quantum
Circuits [82.50620782471485]
QuantumSEA is an in-time sparse exploration for noise-adaptive quantum circuits.
It aims to achieve two key objectives: (1) implicit circuits capacity during training and (2) noise robustness.
Our method establishes state-of-the-art results with only half the number of quantum gates and 2x time saving of circuit executions.
arXiv Detail & Related papers (2024-01-10T22:33:00Z) - TeD-Q: a tensor network enhanced distributed hybrid quantum machine learning framework [48.491303218786044]
TeD-Q is an open-source software framework for quantum machine learning.<n>It seamlessly integrates classical machine learning libraries with quantum simulators.<n>It provides a graphical mode in which the quantum circuit and the training progress can be visualized in real-time.
arXiv Detail & Related papers (2023-01-13T09:35:05Z) - Quantum Machine Learning: from physics to software engineering [58.720142291102135]
We show how classical machine learning approach can help improve the facilities of quantum computers.
We discuss how quantum algorithms and quantum computers may be useful for solving classical machine learning tasks.
arXiv Detail & Related papers (2023-01-04T23:37:45Z) - Improved variational quantum eigensolver via quasi-dynamical evolution [0.0]
The variational quantum eigensolver (VQE) is a hybrid quantum-classical algorithm designed for current and near-term quantum devices.
There are problems with VQE that forbid a favourable scaling towards quantum advantage.
We propose and extensively test a quantum annealing inspired algorithm that supplements VQE.
The improved VQE avoids barren plateaus, exits local minima, and works with low-depth circuits.
arXiv Detail & Related papers (2022-02-21T11:21:44Z) - Towards Quantum Graph Neural Networks: An Ego-Graph Learning Approach [47.19265172105025]
We propose a novel hybrid quantum-classical algorithm for graph-structured data, which we refer to as the Ego-graph based Quantum Graph Neural Network (egoQGNN)
egoQGNN implements the GNN theoretical framework using the tensor product and unity matrix representation, which greatly reduces the number of model parameters required.
The architecture is based on a novel mapping from real-world data to Hilbert space.
arXiv Detail & Related papers (2022-01-13T16:35:45Z)
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.