Trying to predict cryptocurrency prices using artificial neural network models Case study: (Bitcoin, Ethereum, Cardano)

  • Aissa Abdelhafidi Amar Telidji University
Keywords: cryptocurrency, artificial neural networks, Forecasting

Abstract

This study aims to predict the prices of encrypted digital currencies (Bitcoin, Ethereum, Cardano), which is one of the most attractive financial assets for investors as it has become of great importance in the economic field.

Artificial neural networks models were used to find out their effectiveness in predicting the prices of cryptocurrencies. The result confirmed that the PNN-type networks models are strong models in predicting the prices of these currencies in the short term, as the predicted values are very close to the actual values.

References

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Published
2022-01-03