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 change-point 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 exploits persisting trends, but does not overreact to localised price moves, and 2) a fast mean-reversion strategy regime by quickly flipping its position, then swapping it back again to exploit localised price moves. Our CPD module outputs a changepoint location and severity score, allowing our model to learn to respond to varying degrees of disequilibrium, or smaller and more localised changepoints, in a data driven manner. Using a portfolio of 50, liquid, continuous futures contracts over the period 1990-2020, the addition of the CPD module leads to an improvement in Sharpe ratio of one-third. Even more notably, this module is especially beneficial in periods of significant nonstationarity, and in particular, over the most recent years tested (2015-2020) the performance boost is approximately two-thirds. This is especially interesting as traditional momentum strategies have been underperforming in this period.
翻译:动力值战略是替代投资的重要组成部分,是商品交易顾问(CTAs)的核心。然而,这些战略被认为难以适应市场条件的快速变化,例如2020年市场崩溃期间。特别是,在势头转折点后,趋势从上升趋势(下降趋势)转向下降趋势(上升趋势),时间序列动力(TSMOM)战略容易做出错误的赌注。为了改进对制度变化的反应,我们引入了一种新颖的方法,即我们将一个在线改变点检测模块(CPD)纳入深动力网络(DMN) [1904.04912] 管道,该平台使用LSTM深度学习架构同时学习趋势估计和定位。此外,我们的模型能够优化它平衡速度缓慢的策略,它利用了持续趋势,但并没有对地方化的价格变动做出过快反应,2 一个快速的中位反向战略体系,它迅速翻转,然后再次将它转换回到50度网络(DMNM) [1904.4912] 管道,它使用LSTM的深度学习架构,同时学习趋势估计和定位。此外,我们的DA模模模模模值在1990年逐渐改变。