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Trapped Ion Quantum Computing Quantum Machine Learning

Entanglement and Tensor Networks for Supervised Image Classification

arXiv
Authors: John Martyn, Guifre Vidal, Chase Roberts, Stefan Leichenauer

Year

2020

Paper ID

22295

Status

Preprint

Abstract Read

~2 min

Abstract Words

264

Citations

N/A

Abstract

Tensor networks, originally designed to address computational problems in quantum many-body physics, have recently been applied to machine learning tasks. However, compared to quantum physics, where the reasons for the success of tensor network approaches over the last 30 years is well understood, very little is yet known about why these techniques work for machine learning. The goal of this paper is to investigate entanglement properties of tensor network models in a current machine learning application, in order to uncover general principles that may guide future developments. We revisit the use of tensor networks for supervised image classification using the MNIST data set of handwritten digits, as pioneered by Stoudenmire and Schwab [Adv. in Neur. Inform. Proc. Sys. 29, 4799 (2016)]. Firstly we hypothesize about which state the tensor network might be learning during training. For that purpose, we propose a plausible candidate state ellrangle (built as a superposition of product states corresponding to images in the training set) and investigate its entanglement properties. We conclude that ellrangle is so robustly entangled that it cannot be approximated by the tensor network used in that work, which must therefore be representing a very different state. Secondly, we use tensor networks with a block product structure, in which entanglement is restricted within small blocks of n times n pixels/qubits. We find that these states are extremely expressive e.g. training accuracy of $99.97 \%$ already for $n=2$, suggesting that long-range entanglement may not be essential for image classification. However, in our current implementation, optimization leads to over-fitting, resulting in test accuracies that are not competitive with other current approaches.

Why This Paper Matters

  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
  • It adds a 2020 reference point for readers tracking recent quantum research.
  • Tensor networks, originally designed to address computational problems in quantum many-body physics, have recently been applied to machine learning tasks.

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