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Nelson-Siegel, affine and quadratic yield curve specifications: which one is better at forecasting?

机译:Nelson-siegel,仿射和二次收益率曲线规范:哪一个更适合预测?

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摘要

In this paper we compare the in-sample fit and out-of-sample forecasting performance of no-arbitrage quadratic and essentially affine term structure models, as well as the dynamic Nelson-Siegel model. In total eleven model variants are evaluated, comprising five quadratic, four affine and two Nelson-Siegel models. Recursive re-estimation and out-of-sample one-, six- and twelve-months ahead forecasts are generated and evaluated using monthly US data for yields observed at maturities of 1, 6, 12, 24, 60 and 120 months. Our results indicate that quadratic models provide the best in-sample fit, while the best out-of-sample performance is generated by three-factor affine models and the dynamic Nelson-Siegel model variants. However, statistical tests fail to identify one single-best forecasting model class.
机译:在本文中,我们比较了无套利二次和基本仿射项结构模型以及动态Nelson-Siegel模型的样本内拟合和样本外预测性能。总共评估了11个模型变体,包括5个二次方,4个仿射和2个Nelson-Siegel模型。使用美国每月数据,对在1、6、12、24、60和120个月到期时观察到的收益率,进行递归重估和样本外一,六个月和十二个月的超前预测并进行评估。我们的结果表明,二次模型提供了最佳的样本内拟合,而最佳的样本外性能是由三因素仿射模型和动态Nelson-Siegel模型变体生成的。但是,统计测试无法识别一种最佳预测模型类别。

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