DeepBonds: A Deep Learning Approach to Predicting United States Treasury Yield

Jia-Ching Ying, Yu-Bing Wang, Chih-Kai Chang, Ching Chang, Yu-Han Chen, Yow-Shin Liou
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引用次数: 1

Abstract

United State Treasury Bonds are government bonds issued by the United State Treasury through the Public Debt Bureau. The trades of U.S. Treasury Bonds have a huge influence on global economy. To analysis the trend of global economy, many economists believe U.S. Treasury Yield has the ability to predict the fluence of other financial markets such as stock market, futures market, Option market, etc. However, However, most financial prediction models focus only on predicting stock price, which is a sort of multidimensional time-series prediction. Although U.S. Treasury Yield could be viewed as a multidimensional time-series, the prediction models for predicting stock price are not able to completely satisfy the requirements for predicting U.S. Treasury Yield. Besides, most traditional machine learning methods focus only on estimation of short-term cash flow. As the result, the loss of traditional machine learning methods would significantly be increased while the period of prediction target is fluctuated. In this paper, we propose a Deep-Learning framework, DeepBonds, to build a prediction model to predict U.S. Treasury Yield with different issue period. Meanwhile, the Recurrent Neural Network with Long Short Term Memory (LSTM) architecture is utilized for effectively summarizing U.S. Treasury Yield as characteristic vectors. Based on the produced characteristic vectors, we can precisely predict future U.S. Treasury Yield with different issue period. We conduct a comprehensive experimental study based on a real dataset collected from the website of Resource Center of U.S. Department of The Treasury. The results demonstrate a significantly improved accuracy of our Deep Learning approach compared with the existing works.
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深度债券:预测美国国债收益率的深度学习方法
美国国债是由美国财政部通过公共债务局发行的政府债券。美国国债的交易对全球经济有着巨大的影响。为了分析全球经济的走势,许多经济学家认为美国国债收益率具有预测其他金融市场如股票市场、期货市场、期权市场等影响的能力。然而,大多数财务预测模型只关注股票价格的预测,这是一种多维的时间序列预测。虽然美国国债收益率可以看作是一个多维时间序列,但是股票价格的预测模型并不能完全满足预测美国国债收益率的要求。此外,大多数传统的机器学习方法只关注短期现金流量的估计。因此,传统机器学习方法的损失会显著增加,而预测目标的周期是波动的。本文采用深度学习框架DeepBonds构建预测模型,对不同发行周期的美国国债收益率进行预测。同时,利用具有长短期记忆的递归神经网络(LSTM)架构,有效地总结了美国国债收益率作为特征向量。根据所得到的特征向量,我们可以准确地预测未来不同发行周期的美国国债收益率。我们基于美国财政部资源中心网站上的真实数据集进行了全面的实验研究。结果表明,与现有工作相比,我们的深度学习方法的准确性有了显着提高。
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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