Dequantizing quantum machine learning models using tensor networks
Abstract
Ascertaining whether a classical model can efficiently replace a given quantum model -- dequantization -- is crucial in assessing the true potential of quantum algorithms. In this work, we introduced the dequantizability of the function class of variational quantum-machine-learning~(VQML) models by employing the tensor network formalism, effectively identifying every VQML model as a subclass of matrix product state (MPS) model characterized by constrained coefficient MPS and tensor product-based feature maps. From this formalism, we identify the conditions for which a VQML model's function class is dequantizable or not. Furthermore, we introduce an efficient quantum kernel-induced classical kernel which is as expressive as given any quantum kernel, hinting at a possible way to dequantize quantum kernel methods. This presents a thorough analysis of VQML models and demonstrates the versatility of our tensor-network formalism to properly distinguish VQML models according to their genuine quantum characteristics, thereby unifying classical and quantum machine-learning models within a single framework.
Cite
@article{arxiv.2307.06937,
title = {Dequantizing quantum machine learning models using tensor networks},
author = {Seongwook Shin and Yong Siah Teo and Hyunseok Jeong},
journal= {arXiv preprint arXiv:2307.06937},
year = {2024}
}
Comments
15 + 14 pages, 8 + 9 figures