Neural networks for estimating Macro Asset Pricing model in football clubs

Author:

Alaminos David1ORCID,Esteban Ignacio2,Salas M. Belén34

Affiliation:

1. Department of Business Universitat de Barcelona Barcelona Spain

2. Department of Business Management Universidad de Málaga Málaga Spain

3. Department of Finance and Accounting Universidad de Málaga Málaga Spain

4. Cátedra de Economía y Finanzas Sostenibles Universidad de Málaga Málaga Spain

Abstract

SummaryThe recent crisis caused by COVID‐19 directly affected consumption habits and the stability sof financial markets. In particular, the football industry has been hit hard by this pandemic and therefore has more volatile stock prices. Given this new scenario, further research is needed to accurately estimate the value of the shares of football clubs. In this paper, we estimate an asset pricing model in football clubs with different compositions of risk nature using non‐linear techniques of artificial neural networks. Usually, asset pricing models have been estimated with linear methods such as ordinary least squares. Our results show a precision higher than 90% for all the estimated models, which far exceeds those shown by linear methods in the previous literature. We find that the residual represents about 40% of the variance of the price‐dividend ratio. Long‐term risks follow in importance, and above all, the habit component and its behaviour in the face of changes. The importance of the residual component exists due to a low correlation between the asset price and consumer behaviour, but to a much lesser extent than that shown in previous studies. The estimation carried out with artificial neural networks, both the Deep Learning methods and especially the Quantum Neural Network, opens up new possibilities to estimate more efficiently the pricing of financial assets in the football industry.

Funder

Universitat de Barcelona

Publisher

Wiley

Subject

Finance,General Business, Management and Accounting

Reference93 articles.

1. Bourse et Football

2. Currency Crises Prediction Using Deep Neural Decision Trees

3. Quantum Neural Networks for Forecasting Inflation Dynamics;Alaminos D.;Journal of Scientific and Industrial Research,2020

4. Habit, Long-Run Risks, Prospect? A Statistical Inquiry

5. La Cotation des Clubs de Football Anglais. Une Analyse Différenciée des Facteurs Explicatifs de Fluctuations de Cours;Allouche J.;Les Cahiers de Recherche du GREGOR.,2005

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