Predicting market movement direction for bitcoin: A comparison of time series modeling methods

Abstract Many traders participate in activities known as "day-trading", trading Bitcoin against the dollar bill as the United States Dollar (USD) on very short timeframes to squeeze out profits from small market fluctuations. This paper aims to help traders decide how to best act by creating a model that can predict price movement's direction for the next 5-min time frame. Several machine-learning models have been tested for this Up/Down binary-classification problem. In this paper, we provide a comparison of the state-of-art strategies in predicting the movement direction for bitcoin, including Random Guessing and a Momentum-Based Strategy. The tested models include Autoregressive Integrated Moving Average (ARIMA), Prophet (by Facebook), Random Forest, Random Forest Lagged-Auto-Regression, and Multi-Layer Perceptron (MLP) Neural Networks. The MLP deep neural network has achieved the highest accuracy of 54% compared to other time-series prediction models. Also, in this paper, various data transformation and feature engineering have been applied in the comparison.

[1]  Zheshi Chen,et al.  Bitcoin price prediction using machine learning: An approach to sample dimension engineering , 2020, J. Comput. Appl. Math..

[2]  Rasha Kashef,et al.  Efficient Prediction of Gold Prices Using Hybrid Deep Learning , 2020, ICIAR.

[3]  Martin Kleinsteuber,et al.  Cash flow prediction: MLP and LSTM compared to ARIMA and Prophet , 2019, Electron. Commer. Res..

[4]  Devavrat Shah,et al.  Bayesian regression and Bitcoin , 2014, 2014 52nd Annual Allerton Conference on Communication, Control, and Computing (Allerton).

[5]  Benjamin Letham,et al.  Forecasting at Scale , 2018 .

[6]  Snehanshu Saha,et al.  Predicting the direction of stock market prices using tree-based classifiers , 2019, The North American Journal of Economics and Finance.

[7]  Simon Caton,et al.  Predicting the Price of Bitcoin Using Machine Learning , 2018, 2018 26th Euromicro International Conference on Parallel, Distributed and Network-based Processing (PDP).

[8]  Vivek K. Pandey,et al.  The Value of Bitcoin in Enhancing the Efficiency of an Investor's Portfolio , 2014 .

[9]  Zhengyao Jiang,et al.  Cryptocurrency portfolio management with deep reinforcement learning , 2016, 2017 Intelligent Systems Conference (IntelliSys).

[10]  S. Terjesen,et al.  Blockchain, Bitcoin, and ICOs: a review and research agenda , 2020, Small Business Economics.

[11]  Xiao Zhong,et al.  Forecasting daily stock market return using dimensionality reduction , 2017, Expert Syst. Appl..

[12]  Chulwoo Han,et al.  Deep learning networks for stock market analysis and prediction: Methodology, data representations, and case studies , 2017, Expert Syst. Appl..

[13]  J. Agrawal,et al.  State-of-the-Art in Stock Prediction Techniques , 2013 .

[14]  Yu Wang,et al.  Cryptocurrency: A New Investment Opportunity? , 2017 .

[15]  Fran Casino,et al.  A systematic literature review of blockchain-based applications: Current status, classification and open issues , 2019, Telematics Informatics.

[16]  Işil Yenidoğan,et al.  Bitcoin Forecasting Using ARIMA and PROPHET , 2018, 2018 3rd International Conference on Computer Science and Engineering (UBMK).

[17]  Ahmed Ibrahim,et al.  Bitcoin Network Mechanics: Forecasting the BTC Closing Price Using Vector Auto-Regression Models Based on Endogenous and Exogenous Feature Variables , 2020, Journal of Risk and Financial Management.

[18]  Xue Tan,et al.  Predicting the closing price of cryptocurrencies: a comparative study , 2019, DATA.

[19]  José M. Molina López,et al.  Data Fusion In Cloud Computing: Big Data Approach , 2017, ECMS.

[20]  Adriano M. Pereira,et al.  A neural network based approach to support the Market Making strategies in High-Frequency Trading , 2014, 2014 International Joint Conference on Neural Networks (IJCNN).

[21]  Xu Huang,et al.  Big-Crypto: Big Data, Blockchain and Cryptocurrency , 2018, Big Data Cogn. Comput..

[22]  Hossein Hassani,et al.  Fusing Big Data, Blockchain, and Cryptocurrency , 2019, Fusing Big Data, Blockchain and Cryptocurrency.