A Gated Recurrent Unit Approach to Bitcoin Price Prediction
Abstract
:1. Introduction
2. Methodology
3. Data Collection and Feature Engineering
3.1. Data Pre-Processing
3.2. Feature Selection
4. Model Implementation and Results
5. Portfolio Strategy
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Features | Definition | Source |
---|---|---|
Bitcoin Price | Bitcoin prices. | https://charts.bitcoin.com/btc/ |
BTC Price Volatility | The annualized daily volatility of price changes. Price volatility is computed as the standard deviation of daily returns, scaled by the square root of 365 to annualize, and expressed as a decimal. | https://charts.bitcoin.com/btc/ |
BTC Miner Revenue | Total value of Coinbase block rewards and transaction fees paid to miners. Historical data showing (number of bitcoins mined per day + transaction fees) * market price. | https://www.quandl.com/data/BCHAIN/MIREV-Bitcoin-Miners-Revenue |
BTC Transaction Volume | The number of transactions included in the blockchain each day. | https://charts.bitcoin.com/btc/ |
Transaction Fees | Total amount of Bitcoin Core (BTC) fees earned by all miners in 24-hour period, measured in Bitcoin Core (BTC). | https://charts.bitcoin.com/btc/ |
Hash Rate | The number of block solutions computed per second by all miners on the network. | https://charts.bitcoin.com/btc/ |
Money Supply | The amount of Bitcoin Core (BTC) in circulation. | https://charts.bitcoin.com/btc/ |
Metcalfe-UTXO | Metcalfe’s Law states that the value of a network is proportional to the square of the number of participants in the network. | https://charts.bitcoin.com/btc/ |
Block Size | Miners collect Bitcoin Core (BTC) transactions into distinct packets of data called blocks. Each block is cryptographically linked to the preceding block, forming a "blockchain." As more people use the Bitcoin Core (BTC) network for Bitcoin Core (BTC) transactions, the block size increases. | https://charts.bitcoin.com/btc/ |
Google Trends | This is the month-wise Google search results for the Bitcoins. | https://trends.google.com |
Volatility (VIX) | VIX is a real-time market index that represents the market’s expectation of 30-day forward-looking volatility. | http://www.cboe.com/products/vix-index-volatility/vix-options-and-futures/vix-index/vix-historical-data |
Gold price Level | Gold price level. | https://www.quandl.com/data/WGC/GOLD_DAILY_USD-Gold-Prices-Daily-Currency-USD |
US Dollar Index | The U.S. dollar index (USDX) is a measure of the value of the U.S. dollar relative to the value of a basket of currencies of the majority of the U.S.’ most significant trading partners. | https://finance.yahoo.com/quote/DX-Y.NYB/history?period1=1262332800&period2=1561878000&interval=1d&filter=history&frequency=1d |
US Bond Yields | 2-year / short-term yields. | https://www.quandl.com/data/USTREASURY/YIELD-Treasury-Yield-Curve-Rates |
US Bond Yields | 10-year/ long term yields. | https://www.quandl.com/data/USTREASURY/YIELD-Treasury-Yield-Curve-Rates |
US Bond Yields | Difference between 2 year and 10 year/ synonymous with yield inversion and recession prediction | https://www.quandl.com/data/USTREASURY/YIELD-Treasury-Yield-Curve-Rates |
MACD | MACD=12-Period EMA −26-Period EMA. We have taken the data of the MACD with the signal line. MACD line = 12-day EMA Minus 26-day EMA Signal line = 9-day EMA of MACD line MACD Histogram = MACD line Minus Signal line | |
Ripple Price | The price of an alternative cryptocurrency. | https://coinmarketcap.com/currencies/ripple/historical-data/?start=20130428&end=20190924 |
One Day Lagged S&P 500 Market Returns | Stock market returns. | https://finance.yahoo.com/quote/%5EGSPC/history?period1=1230796800&period2=1568012400&interval=1d&filter=history&frequency=1d |
Interest Rates | The federal funds rate decide the shape of the future interest rates in the economy. | http://www.fedprimerate.com/fedfundsrate/federal_funds_rate_history.htm#current |
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Predictor Variables | VIF | Predictor Variables | VIF |
---|---|---|---|
Bitcoin daily lag returns | 1.023 | Block size | 30.208 |
Daily transaction volume | 2.823 | MACD histogram | 1.27 |
Price volatility | 1.13 | S&P lag returns | 1.005 |
Transaction fees | 4.671 | VIX | 1.671 |
Miner revenue | 28.664 | Dollar index | 6.327 |
Hash rate | 2.694 | Gold | 5.267 |
Interest rates | 49.718 | 2 Yr yield | 3.074 |
Google trend | 9.847 | 10 Yr yield | 8.101 |
Money supply | 8.462 | Ripple price | 5.866 |
Metcalf UTXO | 12.003 | Diff 2 yr–10 yr diff | 11.283 |
Models | RMSE Train | RMSE Test | p-Value |
---|---|---|---|
Neural Network | 0.020 | 0.031 | |
LSTM | 0.010 | 0.024 | 0.0000 |
GRU | 0.010 | 0.019 | 0.0000 |
GRU-Dropout | 0.014 | 0.017 | 0.0012 |
GRU-Dropout-GRU | 0.012 | 0.034 | 0.0000 |
Lookback Period (Days) | RMSE Train | RMSE Test | p-Value |
---|---|---|---|
15 | 0.012 | 0.016 | |
45 | 0.011 | 0.019 | 0.0010 |
60 | 0.011 | 0.017 | 0.0006 |
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Dutta, A.; Kumar, S.; Basu, M. A Gated Recurrent Unit Approach to Bitcoin Price Prediction. J. Risk Financial Manag. 2020, 13, 23. https://doi.org/10.3390/jrfm13020023
Dutta A, Kumar S, Basu M. A Gated Recurrent Unit Approach to Bitcoin Price Prediction. Journal of Risk and Financial Management. 2020; 13(2):23. https://doi.org/10.3390/jrfm13020023
Chicago/Turabian StyleDutta, Aniruddha, Saket Kumar, and Meheli Basu. 2020. "A Gated Recurrent Unit Approach to Bitcoin Price Prediction" Journal of Risk and Financial Management 13, no. 2: 23. https://doi.org/10.3390/jrfm13020023