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   measurement of bitcoin daily and monthly price prediction error using grey model, back propagation artificial neural network and integrated model of grey neural network  
   
نویسنده madanchi zaj mahdi ,samavi mohammad ebrahim ,koosha emad
منبع advances in mathematical finance and applications - 2022 - دوره : 7 - شماره : 3 - صفحه:535 -553
چکیده    One of the recent financial technologies is block chain-based currency known as cryptocurrency that these days because of their unique features has become quite popular. the first known cryptocurrency in the world is bitcoin, and since the cryptocurrencies market is a contemporary one, bitcoin is currently considered as the pioneer of this market. since the value of the previous bitcoin prices data have a non-linear behaviour, this study aims at predicting bitcoin price using grey model, back propagation artificial neural network and integrated model of grey neural network. then, the prediction’s accuracy of these methods will be measured using mape and rmse indices and also bitcoin price data for a five-year period (2014-2018). the results had indicated that wen estimating bitcoin daily prices, back propagation artificial neural network model has the lowest absolute error rate (5.6%) compared to the grey model and the integrated model. additionally, for the monthly prediction of bitcoin price, the integrated model, with the lowest absolute error rate (9%), has a better performance than the two other models.
کلیدواژه back propagation artificial ,neural network ,bitcoin ,blockchain ,grey model ,grey-neural network
آدرس islamic azad university , electronic campus, department of financial management, iran, islamic azad university, science and research branch, college of management and economics, department of finance, iran, islamic azad university, qazvin branch, department of finance, iran
پست الکترونیکی emadkoosha92@gmail.com
 
     
   
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