Spectral Phase Encoding for Quantum Kernel Methods

arXiv:2602.19644v1h-index: 6
Originality Incremental advance
AI Analysis

This addresses robustness issues in near-term quantum machine learning for researchers developing practical quantum algorithms.

The paper tackled the problem of quantum kernel methods degrading under data corruption by introducing Spectral Phase Encoding (SPE), a hybrid construction combining DFT preprocessing with diagonal phase-only embedding. Results showed DFT-based preprocessing yielded the smallest degradation rate as noise increased, with statistically supported slope differences relative to PCA and RP variants, and comparable degradation to linear SVM baselines.

Quantum kernel methods are promising for near-term quantum ma- chine learning, yet their behavior under data corruption remains insuf- ficiently understood. We analyze how quantum feature constructions degrade under controlled additive noise. We introduce Spectral Phase Encoding (SPE), a hybrid construc- tion combining a discrete Fourier transform (DFT) front-end with a diagonal phase-only embedding aligned with the geometry of diagonal quantum maps. Within a unified framework, we compare QK-DFT against alternative quantum variants (QK-PCA, QK-RP) and classi- cal SVM baselines under identical clean-data hyperparameter selection, quantifying robustness via dataset fixed-effects regression with wild cluster bootstrap inference across heterogeneous real-world datasets. Across the quantum family, DFT-based preprocessing yields the smallest degradation rate as noise increases, with statistically sup- ported slope differences relative to PCA and RP. Compared to classical baselines, QK-DFT shows degradation comparable to linear SVM and more stable than RBF SVM under matched tuning. Hardware exper- iments confirm that SPE remains executable and numerically stable for overlap estimation. These results indicate that robustness in quan- tum kernels depends critically on structure-aligned preprocessing and its interaction with diagonal embeddings, supporting a robustness-first perspective for NISQ-era quantum machine learning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes