An adaptive network-based approach for advanced forecasting of cryptocurrency values
This work addresses price prediction for cryptocurrencies like Bitcoin and Ethereum, which is an incremental improvement in financial forecasting methods.
The paper tackles cryptocurrency price forecasting by proposing an Adaptive Network Based Fuzzy Inference System (ANFIS) architecture, achieving predictions for the next seven days with performance evaluated against other neural network models using statistical criteria.
This paper describes an architecture for predicting the price of cryptocurrencies for the next seven days using the Adaptive Network Based Fuzzy Inference System (ANFIS). Historical data of cryptocurrencies and indexes that are considered are Bitcoin (BTC), Ethereum (ETH), Bitcoin Dominance (BTC.D), and Ethereum Dominance (ETH.D) in a daily timeframe. The methods used to teach the data are hybrid and backpropagation algorithms, as well as grid partition, subtractive clustering, and Fuzzy C-means clustering (FCM) algorithms, which are used in data clustering. The architectural performance designed in this paper has been compared with different inputs and neural network models in terms of statistical evaluation criteria. Finally, the proposed method can predict the price of digital currencies in a short time.