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Forecasting the yield curve of government bonds: a dynamic factor approach

机译:预测政府债券收益率曲线:一种动态因素方法

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Purpose - Forecasting the future movement of yield curves contains valuable information for both academic and practical issues such as bonding pricing, portfolio management, and government policies. The purpose of this paper is to develop a dynamic factor approach that can provide more precise and consistent forecasting results under various yield curve dynamics. Design/methodology/approach - The paper develops a unified dynamic factor model based on Diebold and Li (2006) and Nelson and Siegel (1987) three-factor model to forecast the future movement yield curves. The authors apply the state-space model and the Kalman filter to estimate parameters and extract factors from the US yield curve data. Findings - The authors compare both in-sample and out-of-sample performance of the dynamic approach with various existing models in the literature, and find that the dynamic factor model produces the best in-sample fit, and it dominates existing models in medium- and long-horizon yield curve forecasting performance. Research limitations/implications - The authors find that the dynamic factor model and the Kalman filter technique should be used with caution when forecasting short maturity yields on a short time horizon, in which the Kalman filter is prone to trade off out-of-sample robustness to maintain its in-sample efficiency. Practical implications - Bond analysts and portfolio managers can use the dynamic approach to do a more accurate forecast of yield curve movements. Social implications - The enhanced forecasting approach also equips the government with a valuable tool in setting macroeconomic policies. Originality/value - The dynamic factor approach is original in capturing the level, slope, and curvature of yield curves in that the decay rate is set as a free parameter to be estimated from yield curve data, instead of setting it to be a fixed rate as in the existing literature. The difference range of estimated decay rate provides richer yield curve dynamics and is the key to stronger forecasting performance.
机译:目的-预测收益率曲线的未来移动包含有关学术和实际问题的重要信息,例如债券定价,投资组合管理和政府政策。本文的目的是开发一种动态因子方法,该方法可以在各种产量曲线动态下提供更精确和一致的预测结果。设计/方法/方法-本文基于Diebold and Li(2006)和Nelson and Siegel(1987)三因素模型开发了统一的动态因素模型,以预测未来的运动收益曲线。作者应用状态空间模型和卡尔曼滤波器来估计参数并从美国收益率曲线数据中提取因子。研究结果-作者将动态方法的样本内和样本外性能与文献中的各种现有模型进行了比较,发现动态因子模型产生了最佳的样本内拟合,并且在中等的现有模型中占主导地位-和长期产量曲线的预测性能。研究的局限性/意义-作者发现,在短期内预测短期到期收益率时,应谨慎使用动态因子模型和Kalman滤波技术,因为其中Kalman滤波器易于权衡样本外的鲁棒性保持样品效率。实际意义-债券分析师和投资组合经理可以使用动态方法对收益率曲线变动进行更准确的预测。社会影响-增强的预测方法还为政府提供了制定宏观经济政策的宝贵工具。独创性/值-动态因子方法是捕获收益率曲线的水平,斜率和曲率的原始方法,其中将衰减率设置为可从收益率曲线数据估算的自由参数,而不是将其设置为固定比率就像现有文献一样。估计衰减率的差异范围提供了更丰富的收益曲线动态,是增强预测性能的关键。

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