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A random forest-based model for crypto asset forecasts in futures markets with out-of-sample prediction
Affiliation:1. School of Industrial Engineering, Universidad Politécnica de Madrid (UPM), C. de José Gutiérrez Abascal, 2, 28006 Madrid, Spain;2. ATI Consult, C. José Isbert, 20, Pozuelo de Alarcón, 28223 Madrid, Spain
Abstract:In this study, a price prediction model for futures markets of crypto assets is presented. Random Forest was used to study three scenarios as a function of input variables: technical indicators, candlestick patterns and both simultaneously. In turn, the model parameters, the time intervals, and the most suitable investment horizons were studied. In addition to showing the results from the model, a one-year out-of-sample prediction was simulated. The entire year of 2020 was chosen because the three possible stock market scenarios occurred in this year: a sideways market, a bear market resulting from the global pandemic and an end-of-year bull market. Last, this out-of-sample simulation was analyzed as a real operation, that is, by retraining the model after each new collection of data, so that the model had the maximum information at all times. In conclusion, using candlestick patterns instead of technical indicators, improves the efficiency of the results.
Keywords:Random Forest  Cryptocurrencies  Bitcoin  Technical indicators  Candlestick patterns
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