State-Space Dynamic Functional Regression for Multicurve Fixed Income Spread Analysis and Stress Testing
The Nelson-Siegel model is widely used in fixed income markets to produce yield curve dynamics. The multiple time-dependent parameter model conveniently addresses the level, slope, and curvature dynamics of the yield curves. In this study, we present a novel state-space functional regression model t...
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Zusammenfassung: | The Nelson-Siegel model is widely used in fixed income markets to produce
yield curve dynamics. The multiple time-dependent parameter model conveniently
addresses the level, slope, and curvature dynamics of the yield curves. In this
study, we present a novel state-space functional regression model that
incorporates a dynamic Nelson-Siegel model and functional regression
formulations applied to multi-economy setting. This framework offers distinct
advantages in explaining the relative spreads in yields between a reference
economy and a response economy. To address the inherent challenges of model
calibration, a kernel principal component analysis is employed to transform the
representation of functional regression into a finite-dimensional, tractable
estimation problem. A comprehensive empirical analysis is conducted to assess
the efficacy of the functional regression approach, including an in-sample
performance comparison with the dynamic Nelson-Siegel model. We conducted the
stress testing analysis of yield curves term-structure within a dual economy
framework. The bond ladder portfolio was examined through a case study focused
on spread modelling using historical data for US Treasury and UK bonds. |
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DOI: | 10.48550/arxiv.2409.00348 |