用于债券预测的时间二部图神经网络

D. Zhou, Ajim Uddin, Xinyuan Tao, Zuofeng Shang, Dantong Yu
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引用次数: 1

摘要

了解债券(债务)估值和预测未来价格在金融中非常重要。债券和股票是美国金融市场长期资本的主要来源。然而,与股票相比,人们对债券的研究还不够充分。一个主要原因是二级市场的交易不频繁,这导致了不规则的间隔和缺失的观察。本文试图通过利用债券基金持有数据的网络信息来克服这一挑战,并提出了一种预测债券价格(收益率)的新方法。我们设计了具有自监督正则化的时态二部图神经网络(TBGNN),该网络包含多个组件:从债券和基金相互作用及其相关因素中学习节点嵌入的二部图表示模块;递归神经网络模块对时间交互进行建模;用图结构正则化未标记节点表示的自监督目标。该模型采用深度学习平台中的小批量训练过程(minibatch Stochastic Gradient Descent),减轻了模型在不同模块和目标优化时的复杂度和计算量。结果表明,TBGNN模型能较准确地预测债券价格和收益率。它优于现有的多种图神经网络和多元时间序列方法:在债券价格预测中提高了6%-51%的R2,在债券收益率预测中提高了5%-70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Bipartite Graph Neural Networks for Bond Prediction
Understanding bond (debt) valuation and predicting future prices are of great importance in finance. Bonds are a major source of long-term capital in U.S. financial markets along with stocks. However, compared with stocks, bonds are understudied. One main reason is the infrequent trading in the secondary market, which results in irregular intervals and missing observations. This paper attempts to overcome this challenge by leveraging network information from bond-fund holding data and proposes a novel method to predict bond prices (yields). We design the temporal bipartite graph neural networks (TBGNN) with self-supervision regularization that entails multiple components: the bipartite graph representation module of learning node embeddings from the bond and fund interactions and their associated factors; the recurrent neural network module to model the temporal interactions; and the self-supervised objective to regularize the unlabeled node representation with graph structure. The model adopts a minibatch training process (Minibatch Stochastic Gradient Descent) in a deep learning platform to alleviate the model complexity and computation cost in optimizing different modules and objectives. Results show that our TBGNN model provides a more accurate prediction of bond price and yield. It outperforms multiple existing graph neural networks and multivariate time series methods: improving R2 by 6%-51% in bond price prediction and 5%-70% in bond yield prediction.
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