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Quantum Walk to Train a Classical Artificial Neural Network

Quantum Physics 2021-09-09 v2

Abstract

This work proposes a computational procedure that uses a quantum walk in a complete graph to train classical artificial neural networks. The idea is to apply the quantum walk to search the weight set values. However, it is necessary to simulate a quantum machine to execute the quantum walk. In this way, to minimize the computational cost, the methodology employed to train the neural network will adjust the synaptic weights of the output layer, not altering the weights of the hidden layer, inspired in the method of Extreme Learning Machine. The quantum walk algorithm as a search algorithm is quadratically faster than its classic analog. The quantum walk variance is O(t)O(t) while the variance of its classic analog is O(t)O(\sqrt{t}), where tt is the time or iteration. In addition to computational gain, another advantage of the proposed procedure is to be possible to know \textit{a priori} the number of iterations required to obtain the solutions, unlike the classical training algorithms based on gradient descendent.

Keywords

Cite

@article{arxiv.2109.00128,
  title  = {Quantum Walk to Train a Classical Artificial Neural Network},
  author = {Luciano S. de Souza and Jonathan H. A. de Carvalho and Tiago A. E. Ferreira},
  journal= {arXiv preprint arXiv:2109.00128},
  year   = {2021}
}

Comments

10 Pages, 4 Figures

R2 v1 2026-06-24T05:34:52.883Z