Cryptocurrency Price Prediction with Neural Networks of LSTM and Bayesian Optimization

  • Pour E
  • Jafari H
  • Lashgari A
  • et al.
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Abstract

In this paper we present a price prediction for Bitcoin prices. The methodology used is a hybrid artificial neural network model of Long Short-Term Memory and Bayesian Optimization. This is a complex model with a high prediction power, which to our knowledge has not been applied to prediction of cryptocurrency prices to date. Following Charandabi and Kamyar (2021), we elaborate on previous methods used for prediction of cryptocurrency prices and build on their methodology. We conclude with detailed graphs and tables of optimization results.

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APA

Pour, E. S., Jafari, H., Lashgari, A., Rabiee, E., & Ahmadisharaf, A. (2022). Cryptocurrency Price Prediction with Neural Networks of LSTM and Bayesian Optimization. European Journal of Business and Management Research, 7(2), 20–27. https://doi.org/10.24018/ejbmr.2022.7.2.1307

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