Litcius/Paper detail

Is It Possible to Forecast the Price of Bitcoin?

Julien Chevallier, Dominique Guégan, Stéphane Goutte

2021Forecasting23 citationsDOIOpen Access PDF

Abstract

This paper focuses on forecasting the price of Bitcoin, motivated by its market growth and the recent interest of market participants and academics. We deploy six machine learning algorithms (e.g., Artificial Neural Network, Support Vector Machine, Random Forest, k-Nearest Neighbours, AdaBoost, Ridge regression), without deciding a priori which one is the ‘best’ model. The main contribution is to use these data analytics techniques with great caution in the parameterization, instead of classical parametric modelings (AR), to disentangle the non-stationary behavior of the data. As soon as Bitcoin is also used for diversification in portfolios, we need to investigate its interactions with stocks, bonds, foreign exchange, and commodities. We identify that other cryptocurrencies convey enough information to explain the daily variation of Bitcoin’s spot and futures prices. Forecasting results point to the segmentation of Bitcoin concerning alternative assets. Finally, trading strategies are implemented.

Topics & Concepts

Computer scienceEconometricsFutures contractDiversification (marketing strategy)Trading strategyCryptocurrencyAdaBoostArtificial neural networkForeign exchange marketArtificial intelligenceMarket segmentationSupport vector machineMachine learningEconomicsExchange rateFinancial economicsFinanceBusinessComputer securityMarketingMicroeconomicsBlockchain Technology Applications and SecurityMarket Dynamics and VolatilityComplex Systems and Time Series Analysis