We predict asset returns and measure risk premia using a prominent technique from artificial intelligence -- deep sequence modeling. Because asset returns often exhibit sequential dependence that may not be effectively captured by conventional time series models, sequence modeling offers a promising path with its data-driven approach and superior performance. In this paper, we first overview the development of deep sequence models, introduce their applications in asset pricing, and discuss their advantages and limitations. We then perform a comparative analysis of these methods using data on U.S. equities. We demonstrate how sequence modeling benefits investors in general through incorporating complex historical path dependence, and that Long- and Short-term Memory (LSTM) based models tend to have the best out-of-sample performance.
翻译:我们利用人工智能 -- -- 深序列建模 -- -- 的突出技术来预测资产回报和衡量风险溢价。因为资产回报往往表现出传统的时间序列模型可能无法有效反映的相继依赖性,因此序列建模提供了一条充满希望的道路,其数据驱动方式和优异性能。在本文件中,我们首先概述了深序列模型的开发,介绍了其在资产定价方面的应用,并讨论了其优点和局限性。然后我们利用美国股票数据对这些方法进行比较分析。我们展示了序列建模如何通过纳入复杂的历史路径依赖性对投资者普遍有利,以及基于长期和短期记忆的模型往往具有最佳的外在性能。