A Statistical Machine Learning Approach to Yield Curve Forecasting.pdf


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Gaussian curve yield model Mathe curve. Process data Processes Yield
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A Statistical Machine Learning Approach to Yield Curve
Forecasting
Rajiv Sambasivan1 and Sourish Das2
1Department of Computer Science, Chennai Mathematical Institute
2Department of Mathematics, Chennai Mathematical Institute
March 7, 2017
Abstract
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 ser


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