CRYPTOCURRENCY PRICE FORECASTING: A COMPARATIVE ANALYSIS OF AUTOREGRESSIVE AND RECURRENT NEURAL NETWORK MODELS

被引:0
作者
Katina, Joana [1 ,3 ]
Katin, Igor [2 ,3 ]
Komarova, Vera [4 ]
机构
[1] Vilnius Univ, Inst Comp Sci, Didlaukio St 47, LT-08303 Vilnius, Lithuania
[2] Vilnius Univ, Inst Data Sci & Digital Technol, Akademijos St 4, LT-08412 Vilnius, Lithuania
[3] Higher Educ Inst, Fac Elect & Informat, J Jasinskio St 15, LT-01111 Vilnius, Lithuania
[4] Daugavpils Univ, Vienibas St 13, Daugavpils, Latvia
关键词
forecasting; prediction; cryptocurrencies; time series; ARIMA; SARIMA; RNN; LSTM; GRU; ARIMA;
D O I
10.9770/jesi.2024.11.4(26)
中图分类号
F [经济];
学科分类号
02 ;
摘要
This article presents a novel approach to cryptocurrency price forecasting, leveraging advanced machine-learning techniques. By comparing traditional autoregressive models with recurrent neural network approaches, the study aims to evaluate the forecasting accuracy of Autoregressive Integrated Moving Average (ARIMA), Seasonal ARIMA (SARIMA), Long Short-Term Memory (LSTM), and Gated Recurrent Unit (GRU) models across various cryptocurrencies, including Bitcoin, Ethereum, Dogecoin, Polygon, and Toncoin. The data for this empirical study was sourced from historical prices of these specific cryptocurrencies, as recorded on the CoinMarketCap platform, covering January 2022 to April 2024. The methodology employed involves rigorous statistical and neural network modelling where each model's parameters were meticulously optimized for the specific characteristics of each cryptocurrency's and Mean Absolute Percentage Error (MAPE) were used to assess the precision of each model. The main results indicate that LSTM and GRU models, leveraging deep learning techniques, generally outperformed the traditional ARIMA and SARIMA models regarding error metrics. This demonstrates a higher efficacy of neural networks in handling the non-linear complexities and volatile nature of cryptocurrency price movements. This study contributes to the ongoing discourse in financial technology by elucidating the practical implications of using advanced machine-learning techniques for economic forecasting. Importantly, it provides valuable insights that can directly inform and enhance the decision-making processes of investors and traders in digital assets.
引用
收藏
页码:425 / 436
页数:12
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