Data re-uploading for a universal quantum classifier (original) (raw)

A single qubit provides sufficient computational capabilities to construct a universal quantum classifier when assisted with a classical subroutine. This fact may be surprising since a single qubit only offers a simple superposition of two states and single-qubit gates only make a rotation in the Bloch sphere. The key ingredient to circumvent these limitations is to allow for multiple textitdatare−uploading\textit{data re-uploading}textitdatareuploading. A quantum circuit can then be organized as a series of data re-uploading and single-qubit processing units. Furthermore, both data re-uploading and measurements can accommodate multiple dimensions in the input and several categories in the output, to conform to a universal quantum classifier. The extension of this idea to several qubits enhances the efficiency of the strategy as entanglement expands the superpositions carried along with the classification. Extensive benchmarking on different examples of the single- and multi-qubit quantum classifier validates its ability to describe and classify complex data.

In this paper, we show how to use the computational power of a single qubit to solve non-trivial classification problems. We propose a hybrid classical-quantum algorithm based on re-uploading classical data into the angles of the single-qubit unitary gates multiple times along the circuit. Together with the data points, other parameters are introduced into the circuit and adjusted by classically minimizing a cost function. To construct this cost function, we train the circuit to distribute the data points into different regions of the Bloch sphere, one for each class. A particular division of the Bloch sphere accompanies this strategy for maximizing distinguishability between classes.
This procedure cannot provide any quantum advantage as a single qubit can be simulated classically. However, the capability of handling one qubit might be useful as a small piece of larger circuits. Besides, an extension of the algorithm for more qubits and entanglement is also presented in this work. The multi-qubit role remains unexplored and might be a candidate for quantum advantage. A first step analyzed, there exists a trade-off between the number of qubits needed and the times of data re-uploading for classifying, namely layers.
This algorithm is to be compared with a neural network with one hidden layer. Neural Networks re-upload classical data several times, once per hidden neuron, achieving the same kind of processing as in our quantum classifier. Success rates are also comparable for both models.

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[259] Pablo Rodriguez-Grasa, Robert Farzan-Rodriguez, Gabriele Novelli, Yue Ban, and Mikel Sanz, "Satellite image classification with neural quantum kernels", Machine Learning: Science and Technology 6 1, 015043 (2025).

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[287] Asel Sagingalieva, Mohammad Kordzanganeh, Nurbolat Kenbayev, Daria Kosichkina, Tatiana Tomashuk, and Alexey Melnikov, "Hybrid Quantum Neural Network for Drug Response Prediction", Cancers 15 10, 2705 (2023).

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[291] Oriel Kiss, Francesco Tacchino, Sofia Vallecorsa, and Ivano Tavernelli, "Quantum neural networks force fields generation", Machine Learning: Science and Technology 3 3, 035004 (2022).

[292] Isabel Nha Minh Le, Oriel Kiss, Julian Schuhmacher, Ivano Tavernelli, and Francesco Tacchino, "Symmetry-invariant quantum machine learning force fields", New Journal of Physics 27 2, 023015 (2025).

[293] Andrea Skolik, Stefano Mangini, Thomas Bäck, Chiara Macchiavello, and Vedran Dunjko, "Robustness of quantum reinforcement learning under hardware errors", EPJ Quantum Technology 10 1, 8 (2023).

[294] Li Xu, Xiao-yu Zhang, Ming Li, and Shu-qian Shen, "Quantum classifiers with a trainable kernel", Physical Review Applied 21 5, 054056 (2024).

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[296] Fan Fan, Yilei Shi, Tobias Guggemos, and Xiao Xiang Zhu, "Hybrid Quantum-Classical Convolutional Neural Network Model for Image Classification", IEEE Transactions on Neural Networks and Learning Systems 35 12, 18145 (2024).

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[301] Thomas Morstyn and Xiangyue Wang, "Opportunities for quantum computing within net-zero power system optimization", Joule 8 6, 1619 (2024).

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[304] Aikaterini Gratsea and Patrick Huembeli, "The effect of the processing and measurement operators on the expressive power of quantum models", Quantum Machine Intelligence 5 2, 32 (2023).

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[307] Yuxuan Du, Yibo Yang, Dacheng Tao, and Min-Hsiu Hsieh, "Problem-Dependent Power of Quantum Neural Networks on Multiclass Classification", Physical Review Letters 131 14, 140601 (2023).

[308] Mostafa Mokhles and Ilya Makarov, 2023 International Russian Smart Industry Conference (SmartIndustryCon) 363 (2023) ISBN:978-1-6654-6429-1.

[309] Satyanarayana Burugupalli, 2025 13th International Conference on Intelligent Systems and Embedded Design (ISED) 974 (2025) ISBN:979-8-3315-6726-2.

[310] Chen-Yu Liu, Chu-Hsuan Abraham Lin, Chao-Han Huck Yang, Kuan-Cheng Chen, and Min-Hsiu Hsieh, 2024 IEEE International Conference on Quantum Computing and Engineering (QCE) 317 (2024) ISBN:979-8-3315-4137-8.

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[316] Cesar A. Amaral, Vinícius L. Oliveira, Juan P. L. C. Salazar, and Eduardo I. Duzzioni, "A Review of Quantum Machine Learning and Quantum-inspired Applied Methods to Computational Fluid Dynamics", Brazilian Journal of Physics 56 1, 39 (2026).

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[318] Jonas Landman, Natansh Mathur, Yun Yvonna Li, Martin Strahm, Skander Kazdaghli, Anupam Prakash, and Iordanis Kerenidis, "Quantum Methods for Neural Networks and Application to Medical Image Classification", Quantum 6, 881 (2022).

[319] Tingting Li, Ziming Zhao, Liqiang Lu, and Jianwei Yin, 2025 International Conference on Quantum Communications, Networking, and Computing (QCNC) 583 (2025) ISBN:979-8-3315-3159-1.

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[321] Alexey Melnikov, Mohammad Kordzanganeh, Alexander Alodjants, and Ray-Kuang Lee, "Quantum machine learning: from physics to software engineering", Advances in Physics: X 8 1, 2165452 (2023).

[322] Ruhan Wang, Philip Richerme, and Fan Chen, "A hybrid quantum–classical neural network for learning transferable visual representation", Quantum Science and Technology 8 4, 045021 (2023).

[323] Marie Kempkes, Jakob Spiegelberg, Evert van Nieuwenburg, and Vedran Dunjko, "Detecting underdetermination in parameterized quantum circuits", Machine Learning: Science and Technology 7 1, 015010 (2026).

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[325] Johannes Jakob Meyer, Marian Mularski, Elies Gil-Fuster, Antonio Anna Mele, Francesco Arzani, Alissa Wilms, and Jens Eisert, "Exploiting Symmetry in Variational Quantum Machine Learning", PRX Quantum 4 1, 010328 (2023).

[326] Jicheng Yan, Ri-gui Zhou, Wenshan Xu, Yaochong Li, Xue Yang, and Shizheng Jia, "Quantum-assisted speech enhancement via a two-stage hybrid neural network", Applied Acoustics 238, 110792 (2025).

[327] Andrea Skolik, Sofiene Jerbi, and Vedran Dunjko, "Quantum agents in the Gym: a variational quantum algorithm for deep Q-learning", Quantum 6, 720 (2022).

[328] Yudai Suzuki and Muyuan Li, "Effect of alternating layered Ansätze on trainability of projected quantum kernels", Physical Review A 110 1, 012409 (2024).

[329] Maniraman Periyasamy, Axel Plinge, Christopher Mutschler, Daniel D. Scherer, and Wolfgang Mauerer, 2024 IEEE International Conference on Quantum Computing and Engineering (QCE) 1504 (2024) ISBN:979-8-3315-4137-8.

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[332] Belkacem Chikhaoui, 2025 IEEE/ACS 22nd International Conference on Computer Systems and Applications (AICCSA) 1 (2025) ISBN:979-8-3315-5693-8.

[333] Axel Pérez-Obiol, Adrián Pérez-Salinas, Sergio Sánchez-Ramírez, Bruna G. M. Araújo, and Artur Garcia-Saez, "Adiabatic quantum algorithm for artificial graphene", Physical Review A 106 5, 052408 (2022).

[334] Pablo Bermejo and Román Orús, "Variational quantum and quantum-inspired clustering", Scientific Reports 13 1, 13284 (2023).

[335] Aleksei Tolstobrov, Gleb Fedorov, Shtefan Sanduleanu, Shamil Kadyrmetov, Andrei Vasenin, Aleksey Bolgar, Daria Kalacheva, Viktor Lubsanov, Aleksandr Dorogov, Julia Zotova, Peter Shlykov, Aleksei Dmitriev, Konstantin Tikhonov, and Oleg V. Astafiev, "Hybrid quantum learning with data reuploading on a small-scale superconducting quantum simulator", Physical Review A 109 1, 012411 (2024).

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[338] Otmane Ainelkitane, Brian Recktenwall-Calvet, Aasma Iqbal, and Carlos C. N. Kuhn, "Revealing Quantum Information Encoded in Classical Images", (2025).

[339] Marco Fanizza, Yihui Quek, and Matteo Rosati, "Learning Quantum Processes Without Input Control", PRX Quantum 5 2, 020367 (2024).

[340] Anqi Zhang and Shengmei Zhao, "Evolutionary-based searching method for quantum circuit architecture", Quantum Information Processing 22 7, 283 (2023).

[341] Martin F. X. Mauser, Solène Four, Lena Marie Predl, Riccardo Albiero, Francesco Ceccarelli, Roberto Osellame, Philipp Petersen, Borivoje Dakić, Iris Agresti, and Philip Walther, "Experimental data reuploading with provable enhanced learning capabilities", Science Advances 12 15, eaeb1397 (2026).

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[344] Juan M Cruz-Martinez, Matteo Robbiati, and Stefano Carrazza, "Multi-variable integration with a variational quantum circuit", Quantum Science and Technology 9 3, 035053 (2024).

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[347] Xinglin He, Jiaxun Xiao, and Xuanli Lyu, "A Hybrid Quantum–Classical Neural Network Framework for the Detection of Quantum Hacking Attacks in CVQKD", Applied Sciences 16 6, 2793 (2026).

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[350] Pouya Kananian and Hans-Arno Jacobsen, Quantum Science and Technology 253 (2026) ISBN:978-3-032-11152-4.

[351] Dylan Herman, Rudy Raymond, Muyuan Li, Nicolas Robles, Antonio Mezzacapo, and Marco Pistoia, "Expressivity of Variational Quantum Machine Learning on the Boolean Cube", IEEE Transactions on Quantum Engineering 4, 1 (2023).

[352] Nicolas Heurtel, Andreas Fyrillas, Grégoire de Gliniasty, Raphaël Le Bihan, Sébastien Malherbe, Marceau Pailhas, Eric Bertasi, Boris Bourdoncle, Pierre-Emmanuel Emeriau, Rawad Mezher, Luka Music, Nadia Belabas, Benoît Valiron, Pascale Senellart, Shane Mansfield, and Jean Senellart, "Perceval: A Software Platform for Discrete Variable Photonic Quantum Computing", Quantum 7, 931 (2023).

[353] Chukwudubem Umeano and Oleksandr Kyriienko, "Ground state-based quantum feature maps", APL Quantum 3 1, 016110 (2026).

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[355] Thomas J S Durant, Seung Joo Lee, Sarah N Dudgeon, Elizabeth Knight, Brent Nelson, H Patrick Young, Lucila Ohno-Machado, and Wade L Schulz, "Quantum Machine Learning and Data Re-Uploading: Evaluation on Benchmark and Laboratory Medicine Data Sets", Clinical Chemistry 72 4, 451 (2026).

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[358] Md Rubel Ahmed, Toshiaki Koike-Akino, Kieran Parsons, and Ye Wang, 2023 IEEE 66th International Midwest Symposium on Circuits and Systems (MWSCAS) 491 (2023) ISBN:979-8-3503-0210-3.

[359] Navid Markazi and Behrouz Mirza, "Evaluating the performance of classical, quantum, and hybrid quantum neural networks in solving differential equations", Scientific Reports 15 1, 39332 (2025).

[360] Seon-Geun Jeong, Kyeong-Hwan Moon, and Won-Joo Hwang, "Hybrid quantum neural networks for efficient protein-ligand binding affinity prediction", EPJ Quantum Technology 12 1, 120 (2025).

[361] Fabio Valerio Massoli, Lucia Vadicamo, Giuseppe Amato, and Fabrizio Falchi, "A Leap among Quantum Computing and Quantum Neural Networks: A Survey", ACM Computing Surveys 55 5, 1 (2023).

[362] Carlos Bravo-Prieto, "Quantum autoencoders with enhanced data encoding", Machine Learning: Science and Technology 2 3, 035028 (2021).

[363] Yingli Yang, Zongkang Zhang, Anbang Wang, Xiaosi Xu, Xiaoting Wang, and Ying Li, "Maximizing quantum-computing expressive power through randomized circuits", Physical Review Research 6 2, 023098 (2024).

[364] Y. Nishida and F. Aiga, "Applications of quantum circuit learning model using particle-number-conserving state on quantum chemical calculations", APL Quantum 1 2, 026102 (2024).

[365] Abhinav Anand, Matthias Degroote, and Alán Aspuru-Guzik, "Natural evolutionary strategies for variational quantum computation", Machine Learning: Science and Technology 2 4, 045012 (2021).

[366] Hiroshi Ohno, "Grover’s search with learning oracle for constrained binary optimization problems", Quantum Machine Intelligence 6 1, 12 (2024).

[367] Masahiro Kobayashi, Kouhei Nakaji, and Naoki Yamamoto, "Overfitting in quantum machine learning and entangling dropout", Quantum Machine Intelligence 4 2, 30 (2022).

[368] Yongcheng Ding, Yue Ban, Mikel Sanz, José D. Martín-Guerrero, and Xi Chen, "Quantum active learning", Physical Review A 112 1, 012409 (2025).

[369] Sebastián Roca-Jerat and Juan Román-Roche, "A genetic algorithm to generate maximally orthogonal frames in complex space", Machine Learning: Science and Technology 6 3, 035022 (2025).

[370] Wenbin Yu, Lei Yin, Chengjun Zhang, Yadang Chen, and Alex X. Liu, "Application of Quantum Recurrent Neural Network in Low-Resource Language Text Classification", IEEE Transactions on Quantum Engineering 5, 1 (2024).

[371] Adrián Pérez-Salinas, Mahtab Yaghubi Rad, Alice Barthe, and Vedran Dunjko, "Universal approximation of continuous functions with minimal quantum circuits", Physical Review Research 7 4, 043282 (2025).

[372] Francesco Ghisoni, Matteo Borrotti, and Paolo Mariani, "A large scale statistical analysis of quantum and classical neural networks in the medical domain", Scientific Reports 16 1, 3719 (2026).

[373] Adrián Pérez-Salinas, Juan Cruz-Martinez, Abdulla A. Alhajri, and Stefano Carrazza, "Determining the proton content with a quantum computer", Physical Review D 103 3, 034027 (2021).

[374] Matthias C. Caro, Elies Gil-Fuster, Johannes Jakob Meyer, Jens Eisert, and Ryan Sweke, "Encoding-dependent generalization bounds for parametrized quantum circuits", Quantum 5, 582 (2021).

[375] Zhihao Cheng, Kaining Zhang, Li Shen, and Dacheng Tao, "Quantum Imitation Learning", IEEE Transactions on Neural Networks and Learning Systems 35 10, 14190 (2024).

[376] Lukas Gonon and Antoine Jacquier, "Universal Approximation Theorem and Error Bounds for Quantum Neural Networks and Quantum Reservoirs", IEEE Transactions on Neural Networks and Learning Systems 36 6, 11355 (2025).

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[378] Francisco Orts, Gloria Ortega, Elías F. Combarro, Ignacio F. Rúa, and Ester M. Garzón, "Optimized quantum leading zero detector circuits", Quantum Information Processing 22 1, 28 (2022).

[379] Aman Kumar Prajapati, Lupam Kumar Saha, Mohammed Nabeel Ahsan, and H Aswath Babu, 2025 IEEE International Conference on Recent Advances in Systems Science and Engineering (RASSE) 1 (2025) ISBN:979-8-3315-4435-5.

[380] Asel Sagingalieva, Stefan Komornyik, Arsenii Senokosov, Ayush Joshi, Christopher Mansell, Olga Tsurkan, Karan Pinto, Markus Pflitsch, and Alexey Melnikov, "Photovoltaic power forecasting using quantum machine learning", Solar Energy 302, 114016 (2025).

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[386] Jinkai Tian and Wenjing Yang, "Toward Transparent and Controllable Quantum Generative Models", Entropy 26 11, 987 (2024).

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[388] Yuxuan Du, Xinbiao Wang, Naixu Guo, Zhan Yu, Yang Qian, Kaining Zhang, Min-Hsiu Hsieh, Patrick Rebentrost, and Dacheng Tao, A Gentle Introduction to Quantum Machine Learning 111 (2025) ISBN:978-981-95-1283-6.

[389] Farida Farsian, Nicoló Parmiggiani, Alessandro Rizzo, Gabriele Panebianco, Andrea Bulgarelli, Francesco Schilliró, Carlo Burigana, Vincenzo Cardone, Luca Cappelli, Massimo Meneghetti, Giuseppe Murante, Giuseppe Sarracino, Roberto Scaramella, Vincenzo Testa, and Tiziana Trombetti, 2025 33rd Euromicro International Conference on Parallel, Distributed, and Network-Based Processing (PDP) 372 (2025) ISBN:979-8-3315-2493-7.

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[396] Wenzhuo Shi, Xianzhuo Sun, Zelong Zhang, Junyu Chen, Yuhua Du, Jiaqi Ruan, Yibo Ding, Lei Wang, Yigeng Huangfu, and Zhao Xu, "Optimal Energy Management for Multistack Fuel Cell Vehicles Based on Hybrid Quantum Reinforcement Learning", IEEE Transactions on Transportation Electrification 11 3, 8500 (2025).

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[442] Takayuki Sakuma, "Quantum Differential Machine Learning", Quantum Economics and Finance 2 1, 3 (2025).

[443] Keisuke Kojima and Toshiaki Koike-Akino, Frontiers in Optics + Laser Science 2024 (FiO, LS) FW7B.1 (2024) ISBN:978-1-957171-95-1.

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[449] Maria Schuld and Francesco Petruccione, Quantum Science and Technology 217 (2021) ISBN:978-3-030-83097-7.

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The above citations are from Crossref's cited-by service (last updated successfully 2026-04-15 06:06:52). The list may be incomplete as not all publishers provide suitable and complete citation data.

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