Enhancing Time Series Momentum Strategies Using Deep Neural Networks
Lim, Bryan, Zohren, Stefan, Roberts, Stephen
While time series momentum is a well-studied phenomenon in finance, common strategies require the explicit definition of both a trend estimator and a position sizing rule. In this paper, we introduce Deep Momentum Networks -- a hybrid approach which injects deep learning based trading rules into the volatility scaling framework of time series momentum. The model also simultaneously learns both trend estimation and position sizing in a data-driven manner, with networks directly trained by optimising the Sharpe ratio of the signal. Backtesting on a portfolio of 88 continuous futures contracts, we demonstrate that the Sharpe-optimised LSTM improved traditional methods by more than two times in the absence of transactions costs, and continue outperforming when considering transaction costs up to 2-3 basis points. To account for more illiquid assets, we also propose a turnover regularisation term which trains the network to factor in costs at run-time.
Apr-9-2019
- Genre:
- Research Report (0.64)
- Industry:
- Banking & Finance > Trading (1.00)
- Energy > Oil & Gas
- Downstream (0.46)
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