AlphaForge: A Framework to Mine and Dynamically Combine Formulaic Alpha Factors

Hao Shi, Cuicui Luo, Weili Song, Xinting Zhang, Xiang Ao
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Abstract

The variability and low signal-to-noise ratio in financial data, combined with the necessity for interpretability, make the alpha factor mining workflow a crucial component of quantitative investment. Transitioning from early manual extraction to genetic programming, the most advanced approach in this domain currently employs reinforcement learning to mine a set of combination factors with fixed weights. However, the performance of resultant alpha factors exhibits inconsistency, and the inflexibility of fixed factor weights proves insufficient in adapting to the dynamic nature of financial markets. To address this issue, this paper proposes a two-stage formulaic alpha generating framework AlphaForge, for alpha factor mining and factor combination. This framework employs a generative-predictive neural network to generate factors, leveraging the robust spatial exploration capabilities inherent in deep learning while concurrently preserving diversity. The combination model within the framework incorporates the temporal performance of factors for selection and dynamically adjusts the weights assigned to each component alpha factor. Experiments conducted on real-world datasets demonstrate that our proposed model outperforms contemporary benchmarks in formulaic alpha factor mining. Furthermore, our model exhibits a notable enhancement in portfolio returns within the realm of quantitative investment.
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AlphaForge:挖掘并动态组合公式化阿尔法因子的框架
金融数据的多变性和低信噪比,再加上可解释性的必要性,使得阿尔法因子挖掘工作流程成为量化投资的重要组成部分。从早期的人工提取到遗传编程,该领域目前最先进的方法是采用强化学习来挖掘一组具有固定权重的组合因子。然而,所得到的阿尔法因子表现出不一致性,而且固定因子权重缺乏灵活性,不足以适应金融市场的动态特性。为了解决这个问题,本文提出了一个两阶段公式化阿尔法生成框架 AlphaForge,用于阿尔法因子挖掘和因子组合。该框架采用生成-预测神经网络生成因子,利用深度学习固有的稳健空间探索能力,同时保持多样性。在现实世界数据集上进行的实验表明,我们提出的模型在公式化阿尔法因子挖掘方面优于当代基准。此外,我们的模型在量化投资领域的投资组合回报率方面也有显著提升。
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