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Quantum Machine Learning
Curvature-Aware Optimization of Noisy Variational Quantum Circuits via Weighted Projective Line Geometry
arXiv
Authors: Gunhee Cho, Jessie Wang, Angela Yue
Year
2025
Paper ID
16448
Status
Preprint
Abstract Read
~2 min
Abstract Words
164
Citations
N/A
Abstract
We develop a differential-geometric framework for variational quantum circuits in which noisy single- and multi-qubit parameter spaces are modeled by weighted projective lines (WPLs). Starting from the pure-state Bloch sphere CP1, we show that realistic hardware noise induces anisotropic contractions of the Bloch ball that can be represented by a pair of physically interpretable parameters lambdaperp, lambdaparallel. These parameters determine a unique WPL metric g_WPLaoverb, b whose scalar curvature is R = 2 / b^2, yielding a compact and channel-resolved geometric surrogate for the intrinsic information structure of noisy quantum circuits. We develop a tomography-to-geometry pipeline that extracts lambdaperp, lambdaparallel from hardware data and maps them to the WPL parameters aoverb, b, R. Experiments on IBM Quantum backends show that the resulting WPL geometries accurately capture anisotropic curvature deformation across calibration periods. Finally, we demonstrate that WPL-informed quantum natural gradients (WPL-QNG) provide stable optimization dynamics for noisy variational quantum eigensolvers and enable curvature-aware mitigation of barren plateaus.
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- We develop a differential-geometric framework for variational quantum circuits in which noisy single- and multi-qubit parameter spaces are modeled by weighted projective lines...
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