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Trapped Ion Quantum Computing Quantum Machine Learning Quantum Simulation

Explainable quantum regression algorithm with encoded data structure

arXiv
Authors: C. -C. Joseph Wang, F. Perkkola, I. Salmenperä, A. Meijer-van de Griend, J. K. Nurminen

Year

2026

Paper ID

52488

Status

Preprint

Abstract Read

~2 min

Abstract Words

239

Citations

0

Abstract

Hybrid variational quantum algorithms are promising for solving practical problems, such as combinatorial optimization, quantum chemistry simulation, quantum machine learning, and quantum error correction on noisy quantum computers. However, variational quantum algorithms (derived from randomized hardware-efficient ansatz or adaptive ansatz) become a black box, not trustworthy for model interpretation, and not to mention for application deployment in informing critical decisions. In this paper, we construct the first interpretable quantum regression algorithm, in which the quantum state exactly encodes the classical data table and the variational parameters correspond directly to the regression coefficients, which are real numbers by construction, providing a high degree of model interpretability and minimal cost to optimize due to the right expressiveness. We also exploit the encoded data structure to reduce the gate complexity of computing the regression map. To reduce circuit depth in nonlinear regression, our algorithm can be extended by directly constructing nonlinear features via classical preprocessing, such as independent encoded column vectors. By design, the model performance is determined by the cost function measurement results mathcal{C} synchronous to the mean squared errors (MSE) for the regression models. We derived the read-out errors induced by one-hot encoding and compact encoding; the required physical qubit resources are exponentially compressed for the compact encoding to be favorable for noisy quantum devices. We also derive the cost function dependent sample complexity in mathcal{O}left\(σ2(mathcal{C}\) ln (1/α)/ε2right) under the error budget ε and confidence tolerance α.

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  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
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  • Hybrid variational quantum algorithms are promising for solving practical problems, such as combinatorial optimization, quantum chemistry simulation, quantum machine learning...

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