Explainable quantum regression algorithm with encoded data structure
C.-C. Joseph Wang, F. Perkkola, I. Salmenper\"a, A. Meijer-van de Griend, J. K. Nurminen, R. S. Bennink

TL;DR
This paper introduces an interpretable quantum regression algorithm that encodes classical data directly into quantum states, enabling transparent model parameters and efficient computation, with potential applications in quantum machine learning.
Contribution
The paper presents the first interpretable quantum regression algorithm with data encoding that directly maps classical data to quantum states and regression coefficients.
Findings
Quantum state encodes classical data exactly.
Regression coefficients are directly interpretable real numbers.
Reduced time complexity for computing the regression map.
Abstract
Hybrid variational quantum algorithms (VQAs) 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, with typical random ansatz or quantum alternating operator ansatz, derived variational quantum algorithms become a black box that cannot be trusted for model interpretation, not to mention deploying as applications in informing critical decisions: the results of these variational parameters are just rotational angles for the quantum gates and have nothing to do with interpretable values that a model can provide directly. 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…
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Taxonomy
TopicsSpectroscopy Techniques in Biomedical and Chemical Research
MethodsFeature Selection · Linear Regression
