Slow Momentum with Fast Reversion: A Trading Strategy Using Deep Learning and Changepoint Detection
Kieran Wood, Stephen Roberts, Stefan Zohren

TL;DR
This paper introduces a novel deep learning trading strategy that incorporates online changepoint detection to adapt to market regime shifts, significantly improving performance during nonstationary periods.
Contribution
It develops a deep momentum network with integrated changepoint detection, enabling dynamic response to market regime changes and enhancing trading performance.
Findings
Sharpe ratio improved by one-third overall
Performance boost of two-thirds in 2015-2020 period
Effective adaptation to market nonstationarity
Abstract
Momentum strategies are an important part of alternative investments and are at the heart of commodity trading advisors (CTAs). These strategies have, however, been found to have difficulties adjusting to rapid changes in market conditions, such as during the 2020 market crash. In particular, immediately after momentum turning points, where a trend reverses from an uptrend (downtrend) to a downtrend (uptrend), time-series momentum (TSMOM) strategies are prone to making bad bets. To improve the response to regime change, we introduce a novel approach, where we insert an online changepoint detection (CPD) module into a Deep Momentum Network (DMN) [1904.04912] pipeline, which uses an LSTM deep-learning architecture to simultaneously learn both trend estimation and position sizing. Furthermore, our model is able to optimise the way in which it balances 1) a slow momentum strategy which…
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Taxonomy
TopicsFinancial Markets and Investment Strategies · Stock Market Forecasting Methods · Market Dynamics and Volatility
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
