金融时间序列预测的因果关系启发模型

Daniel Cunha Oliveira, Yutong Lu, Xi Lin, Mihai Cucuringu, Andre Fujita
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引用次数: 0

摘要

我们为金融时间序列预测引入了一个新框架,该框架利用因果启发模型来平衡对分布变化的不变性和预测误差最小化之间的权衡。据我们所知,这是第一项在资产回报率预测应用中,以非因果特征选择技术为基准,对最先进的因果发现算法进行全面比较分析的研究。实证评估证明了我们的方法在产生稳定而准确的预测方面的功效,其性能优于基准模型,尤其是在动荡的市场条件下。
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Causality-Inspired Models for Financial Time Series Forecasting
We introduce a novel framework to financial time series forecasting that leverages causality-inspired models to balance the trade-off between invariance to distributional changes and minimization of prediction errors. To the best of our knowledge, this is the first study to conduct a comprehensive comparative analysis among state-of-the-art causal discovery algorithms, benchmarked against non-causal feature selection techniques, in the application of forecasting asset returns. Empirical evaluations demonstrate the efficacy of our approach in yielding stable and accurate predictions, outperforming baseline models, particularly in tumultuous market conditions.
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