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An adaptive portfolio trading system: A risk-return portfolio optimization using recurrent reinforcement learning with expected maximum drawdown

机译:自适应投资组合交易系统:使用经常性强化学习和预期最大亏损的风险收益投资组合优化

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摘要

Dynamic control theory has long been used in solving optimal asset allocation problems, and a number of trading decision systems based on reinforcement learning methods have been applied in asset allocation and portfolio rebalancing. In this paper, we extend the existing work in recurrent reinforcement learning (RRL) and build an optimal variable weight portfolio allocation under a coherent downside risk measure, the expected maximum drawdown, E(MDD). In particular, we propose a recurrent reinforcement learning method, with a coherent risk adjusted performance objective function, the Calmar ratio, to obtain both buy and sell signals and asset allocation weights. Using a portfolio consisting of the most frequently traded exchange-traded funds, we show that the expected maximum drawdown risk based objective function yields superior return performance compared to previously proposed RRL objective functions (i.e. the Sharpe ratio and the Sterling ratio), and that variable weight RRL long/short portfolios outperform equal weight RRL long/short portfolios under different transaction cost scenarios. We further propose an adaptive E(MDD) risk based RRL portfolio rebalancing decision system with a transaction cost and market condition stop-loss retraining mechanism, and we show that the proposed portfolio trading system responds to transaction cost effects better and outperforms hedge fund benchmarks consistently. (c) 2017 Elsevier Ltd. All rights reserved.
机译:长期以来,动态控制理论一直用于解决最优资产分配问题,并且许多基于强化学习方法的交易决策系统已应用于资产分配和投资组合再平衡。在本文中,我们扩展了循环强化学习(RRL)中的现有工作,并在一致的下行风险度量(预期最大亏损E(MDD))下建立了最优的可变权重投资组合分配。特别是,我们提出了一种循环强化学习方法,该方法具有连贯的风险调整后的绩效目标函数卡尔玛比率,可同时获得买卖信号和资产配置权重。使用由最频繁交易的交易所交易基金组成的投资组合,我们表明,与先前建议的RRL目标函数(即Sharpe比率和Sterling比率)相比,基于预期最大缩水风险的目标函数产生了更高的收益表现。在不同交易成本情况下,权重RRL多头/空头投资组合的表现优于同等权重RRL多头/空头投资组合。我们进一步提出了一种具有交易成本和市场条件止损重新训练机制的基于自适应E(MDD)风险的RRL投资组合再平衡决策系统,并且我们证明了所提出的投资组合交易系统能够更好地响应交易成本影响,并且始终优于对冲基金基准。 (c)2017 Elsevier Ltd.保留所有权利。

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