Entangling Machine Learning with Quantum Tensor Networks
Abstract
This paper examines the use of tensor networks, which can efficiently represent high-dimensional quantum states, in language modeling. It is a distillation and continuation of the work done in (van der Poel, 2023). To do so, we will abstract the problem down to modeling Motzkin spin chains, which exhibit long-range correlations reminiscent of those found in language. The Matrix Product State (MPS), also known as the tensor train, has a bond dimension which scales as the length of the sequence it models. To combat this, we use the factored core MPS, whose bond dimension scales sub-linearly. We find that the tensor models reach near perfect classifying ability, and maintain a stable level of performance as the number of valid training examples is decreased.
Cite
@article{arxiv.2403.12969,
title = {Entangling Machine Learning with Quantum Tensor Networks},
author = {Constantijn van der Poel and Dan Zhao},
journal= {arXiv preprint arXiv:2403.12969},
year = {2024}
}
Comments
See source code at https://github.com/ConstantijnvdP/eidolon