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Main Authors: Kim, Yerim, Hwang, Kiwmann, Kwon, Hyukjoon, Kim, Yosep
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.03864
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author Kim, Yerim
Hwang, Kiwmann
Kwon, Hyukjoon
Kim, Yosep
author_facet Kim, Yerim
Hwang, Kiwmann
Kwon, Hyukjoon
Kim, Yosep
contents The quantum internet aims to interconnect distant devices and enable large-scale computation through distributed quantum algorithms. One of the key obstacles is communication latency during computation. Even separations of a few hundred kilometers introduce millisecond-scale delays, which exceed the coherence times of many solid-state qubit platforms. In contrast, entanglement can be established beforehand and used as a practical resource to reduce communication complexity between remote nodes. Here we examine the utility of entanglement in distributed quantum machine learning for binary classification tasks. Drawing an analogy with the CHSH game, we show that entanglement improves classification accuracy across all datasets considered. We also find that excessive entanglement may degrade performance by reducing the effective dimension of the parameter space. This highlights the importance of using an appropriate amount and structure of entanglement in data embedding. Our findings bridge nonlocality and machine-learning advantage, providing a pathway toward distributed quantum computation beyond coherence-time constraints.
format Preprint
id arxiv_https___arxiv_org_abs_2605_03864
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The power of entanglement in distributed quantum machine learning
Kim, Yerim
Hwang, Kiwmann
Kwon, Hyukjoon
Kim, Yosep
Quantum Physics
The quantum internet aims to interconnect distant devices and enable large-scale computation through distributed quantum algorithms. One of the key obstacles is communication latency during computation. Even separations of a few hundred kilometers introduce millisecond-scale delays, which exceed the coherence times of many solid-state qubit platforms. In contrast, entanglement can be established beforehand and used as a practical resource to reduce communication complexity between remote nodes. Here we examine the utility of entanglement in distributed quantum machine learning for binary classification tasks. Drawing an analogy with the CHSH game, we show that entanglement improves classification accuracy across all datasets considered. We also find that excessive entanglement may degrade performance by reducing the effective dimension of the parameter space. This highlights the importance of using an appropriate amount and structure of entanglement in data embedding. Our findings bridge nonlocality and machine-learning advantage, providing a pathway toward distributed quantum computation beyond coherence-time constraints.
title The power of entanglement in distributed quantum machine learning
topic Quantum Physics
url https://arxiv.org/abs/2605.03864