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Podium
On-line version ISSN 2588-0969Print version ISSN 1390-5473
Abstract
DIAZ LOPEZ, Manuel Humberto; KING-DOMINGUEZ, Andrea and AMESTICA-RIVAS, Luis. Bitcoin Price Estimation using Multiple Linear Regression and Neural Networks. Podium [online]. 2023, n.44, pp.119-132. ISSN 2588-0969. https://doi.org/10.31095/podium.2023.44.8.
Various studies have focused on estimating the price of cryptocurrencies using time series models and static variables. This study focuses on Bitcoin price prediction, using a model that combines multiple linear regression and neural networks. This approach makes it possible to identify the factors that influence Bitcoin volatility and, through a dynamic selection of variables, to constantly detect the most relevant set of characteristics for prediction. Likewise, the amount of data is optimized to improve precision and avoid overuse of historical information. The combination of these techniques captures underlying patterns and trends, increasing the reliability of predictions, with an accuracy of 88%. However, it is crucial to consider the need for continuous evaluations to adapt to changing market conditions. This approach provides a more accurate tool for making informed decisions in a highly volatile market.
Keywords : Cryptocurrencies; Bitcoin; multiple linear regression model; neural networks; stock indices; volatility index; oil price; market sentiment index.