A Statistical Machine Learning Approach to Yield Curve Forecasting

03/04/2017
by   Rajiv Sambasivan, et al.
0

Yield curve forecasting is an important problem in finance. In this work we explore the use of Gaussian Processes in conjunction with a dynamic modeling strategy, much like the Kalman Filter, to model the yield curve. Gaussian Processes have been successfully applied to model functional data in a variety of applications. A Gaussian Process is used to model the yield curve. The hyper-parameters of the Gaussian Process model are updated as the algorithm receives yield curve data. Yield curve data is typically available as a time series with a frequency of one day. We compare existing methods to forecast the yield curve with the proposed method. The results of this study showed that while a competing method (a multivariate time series method) performed well in forecasting the yields at the short term structure region of the yield curve, Gaussian Processes perform well in the medium and long term structure regions of the yield curve. Accuracy in the long term structure region of the yield curve has important practical implications. The Gaussian Process framework yields uncertainty and probability estimates directly in contrast to other competing methods. Analysts are frequently interested in this information. In this study the proposed method has been applied to yield curve forecasting, however it can be applied to model high frequency time series data or data streams in other domains.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/31/2018

Modeling joint probability distribution of yield curve parameters

US Yield curve has recently collapsed to its most flattened level since ...
research
04/16/2020

Machine learning for multiple yield curve markets: fast calibration in the Gaussian affine framework

Calibration is a highly challenging task, in particular in multiple yiel...
research
09/22/2022

Optimal Stopping with Gaussian Processes

We propose a novel group of Gaussian Process based algorithms for fast a...
research
07/06/2020

Yield curve and macroeconomy interaction: evidence from the non-parametric functional lagged regression approach

Viewing a yield curve as a sparse collection of measurements on a latent...
research
12/22/2015

Facility Deployment Decisions through Warp Optimizaton of Regressed Gaussian Processes

A method for quickly determining deployment schedules that meet a given ...
research
04/29/2022

On Unspanned Latent Risks in Dynamic Term Structure Models

We explore the importance of information hidden from the yield curve and...
research
10/09/2015

p-Markov Gaussian Processes for Scalable and Expressive Online Bayesian Nonparametric Time Series Forecasting

In this paper we introduce a novel online time series forecasting model ...

Please sign up or login with your details

Forgot password? Click here to reset