Fusion of classical and quantum kernels enables accurate and robust two-sample tests
Yu Terada, Yugo Ogio, Ken Arai, Hiroyuki Tezuka, Yu Tanaka

TL;DR
This paper introduces MMD-FUSE, a hybrid kernel-based two-sample test combining classical and quantum kernels, which improves accuracy and robustness especially for small, high-dimensional datasets.
Contribution
It proposes a novel hybrid testing framework that fuses classical and quantum kernels, enhancing two-sample testing performance for small datasets.
Findings
Quantum kernels improve test power for small, high-dimensional data.
The hybrid framework is robust across diverse data scenarios.
Hyperparameter tuning is crucial for optimal performance.
Abstract
Two-sample tests have been extensively employed in various scientific fields and machine learning such as evaluation on the effectiveness of drugs and A/B testing on different marketing strategies to discriminate whether two sets of samples come from the same distribution or not. Kernel-based procedures for hypothetical testing have been proposed to efficiently disentangle high-dimensional complex structures in data to obtain accurate results in a model-free way by embedding the data into the reproducing kernel Hilbert space (RKHS). While the choice of kernels plays a crucial role for their performance, little is understood about how to choose kernel especially for small datasets. Here we aim to construct a hypothetical test which is effective even for small datasets, based on the theoretical foundation of kernel-based tests using maximum mean discrepancy, which is called MMD-FUSE. To…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Tensor decomposition and applications · Gold and Silver Nanoparticles Synthesis and Applications
