Variational quantum recurrent neural networks for multi-feature forecasting

Author:

Huang Rui1ORCID,Yi Haibo1ORCID,Li Pak Hon2ORCID

Affiliation:

1. School of Artificial Intelligence, Shenzhen Polytechnic University, Shenzhen, Guangdong 518055, P. R. China

2. Sage Hill School, 20402 Newport Coast Dr, Newport Beach, CA 92657, United States

Abstract

Recurrent neural networks are a kind of recursion which takes sequence data as input and carries on the evolution of temporal dependency data. Variational quantum algorithms use classical computers as the quantum optimizer to update the circuit parameters. In this work, we propose a variational quantum algorithm of the recurrent neural network, which we dub VQRNN, to find approximate optima in the time series forecasting. Motivated by the variational quantum algorithms, we train classical activation functions to assist quantum computing. Here, unlike the quantum tensor networks (QTN) algorithm that predicts a single output feature with a single time step, our algorithm can forecast multi-output features by adjusting the recurrent hidden state. Finally, we deploy the QTN and VQRNN algorithms on the Origin Quantum platform with the numerical simulator backends using the Meteorological data set. Experimental results show that the atmospheric pressure prediction accuracy of VQRNN is [Formula: see text] in multi-feature forecasting tasks. In addition, we conclude that the variation-based model has an excellent performance in multi-feature output forecasting.

Funder

Shenzhen Polytechnic Research Fund

Scientific Research Startup Fund for Shenzhen High-Caliber Personnel of Shenzhen Polytechnic

Supporting Project of National Natural Science Foundation of China

National Natural Science Foundation of China

Characteristic Innovation Projects in Guangdong Provincial Universities

Scientific Research Startup Fund for Shenzhen Science and Technology Program

Publisher

World Scientific Pub Co Pte Ltd

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