少即是多:利用动态深度神经网络进行短期股指预测的人工智能决策

CJ Finnegan, James F. McCann, Salissou Moutari
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摘要

在本文中,我们介绍了一种基于美国标准普尔 500 指数在期货市场上进行交易的多代理深度学习方法。该方法(称为模型 A)是在现有成熟的机器学习模型基础上的创新,这些模型对市场价格和相关衍生品进行采样,以决定投资是做多/做空还是平仓(零风险敞口)。我们将预测结果与一些传统的机器学习方法(即长短期记忆、随机森林和梯度增强树)进行了比较。结果以被动模型为基准,在被动模型中,期货合约以相同的风险敞口(投资水平)持续持有(做多)。历史测试基于 6 个日历年(2018-23 年)期间进行的每日日间交易。我们发现,模型 A 在关键绩效指标上的表现优于被动投资,在美国大盘股主动基金经理中名列前四分之一。在此期间,模型 A 的表现也优于三个机器学习分类比较对象。我们发现,与被动投资的 100% 市场风险敞口相比,模型 A 的市场风险敞口仅为 41.95%,具有极高的效率(少做多得),因此在降低风险的同时提高了盈利能力。
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Less is more: AI Decision-Making using Dynamic Deep Neural Networks for Short-Term Stock Index Prediction
In this paper we introduce a multi-agent deep-learning method which trades in the Futures markets based on the US S&P 500 index. The method (referred to as Model A) is an innovation founded on existing well-established machine-learning models which sample market prices and associated derivatives in order to decide whether the investment should be long/short or closed (zero exposure), on a day-to-day decision. We compare the predictions with some conventional machine-learning methods namely, Long Short-Term Memory, Random Forest and Gradient-Boosted-Trees. Results are benchmarked against a passive model in which the Futures contracts are held (long) continuously with the same exposure (level of investment). Historical tests are based on daily daytime trading carried out over a period of 6 calendar years (2018-23). We find that Model A outperforms the passive investment in key performance metrics, placing it within the top quartile performance of US Large Cap active fund managers. Model A also outperforms the three machine-learning classification comparators over this period. We observe that Model A is extremely efficient (doing less and getting more) with an exposure to the market of only 41.95% compared to the 100% market exposure of the passive investment, and thus provides increased profitability with reduced risk.
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