Exploring Quantum Neural Networks for Demand Forecasting
Gleydson Fernandes de Jesus,
Maria Heloísa Fraga da Silva,
Otto Menegasso Pires,
Lucas Cruz da Silva,
Clebson dos Santos Cruz,
Valéria Loureiro da Silva
Affiliations
Gleydson Fernandes de Jesus
QuIIN–Quantum Industrial Innovation, EMBRAPII CIMATEC Competence Center in Quantum Technologies, SENAI CIMATEC, Av. Orlando Gomes, Salvador 41650-010, Bahia, Brazil
Maria Heloísa Fraga da Silva
QuIIN–Quantum Industrial Innovation, EMBRAPII CIMATEC Competence Center in Quantum Technologies, SENAI CIMATEC, Av. Orlando Gomes, Salvador 41650-010, Bahia, Brazil
Otto Menegasso Pires
QuIIN–Quantum Industrial Innovation, EMBRAPII CIMATEC Competence Center in Quantum Technologies, SENAI CIMATEC, Av. Orlando Gomes, Salvador 41650-010, Bahia, Brazil
Lucas Cruz da Silva
Robotics Department, SENAI CIMATEC, Salvador 41650-010, Bahia, Brazil
Clebson dos Santos Cruz
Grupo de Informação Quântica e Física Estatística, Centro de Ciências Exatas e das Tecnologias, Universidade Federal do Oeste da Bahia, Barreiras 47810-059, Bahia, Brazil
Valéria Loureiro da Silva
QuIIN–Quantum Industrial Innovation, EMBRAPII CIMATEC Competence Center in Quantum Technologies, SENAI CIMATEC, Av. Orlando Gomes, Salvador 41650-010, Bahia, Brazil
Forecasting demand for assets and services can be addressed in various markets, providing a competitive advantage when the predictive models used demonstrate high accuracy. However, the training of machine learning models incurs high computational costs, which may limit the training of prediction models based on available computational capacity. In this context, this paper presents an approach for training demand prediction models using quantum neural networks. For this purpose, a quantum neural network was used to forecast demand for vehicle financing. A classical recurrent neural network was used to compare the results, and they show a similar predictive capacity between the classical and quantum models, with the advantage of using a lower number of training parameters and also converging in fewer steps. Utilizing quantum computing techniques offers a promising solution to overcome the limitations of traditional machine learning approaches in training predictive models for complex market dynamics.