NeuralBeta: Estimating Beta Using Deep Learning

Yuxin Liu, Jimin Lin, Achintya Gopal
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Abstract

Traditional approaches to estimating beta in finance often involve rigid assumptions and fail to adequately capture beta dynamics, limiting their effectiveness in use cases like hedging. To address these limitations, we have developed a novel method using neural networks called NeuralBeta, which is capable of handling both univariate and multivariate scenarios and tracking the dynamic behavior of beta. To address the issue of interpretability, we introduce a new output layer inspired by regularized weighted linear regression, which provides transparency into the model's decision-making process. We conducted extensive experiments on both synthetic and market data, demonstrating NeuralBeta's superior performance compared to benchmark methods across various scenarios, especially instances where beta is highly time-varying, e.g., during regime shifts in the market. This model not only represents an advancement in the field of beta estimation, but also shows potential for applications in other financial contexts that assume linear relationships.
NeuralBeta:使用深度学习估算贝塔值
金融领域估算贝塔值的传统方法往往涉及僵化的假设,无法充分捕捉贝塔值的动态变化,从而限制了其在对冲等应用案例中的有效性。为了解决这些局限性,我们利用神经网络开发了一种名为 NeuralBeta 的新方法,它能够处理单变量和多变量情况,并跟踪贝塔系数的动态行为。为了解决可解释性问题,我们从正则化加权线性回归中获得灵感,引入了一个新的输出层,为模型的决策过程提供了透明度。我们在合成数据和市场数据上进行了大量实验,证明神经贝塔模型在各种情况下,尤其是在贝塔值高度时变的情况下,如市场制度转变期间,与基准方法相比具有更优越的性能。该模型不仅代表了贝塔估算领域的进步,还显示了在其他假设线性关系的金融环境中的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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