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Functional Autoregression for Sparsely Sampled Data

Authors :
David S. Matteson
David Ruppert
Daniel R. Kowal
Source :
Journal of Business & Economic Statistics. 37:97-109
Publication Year :
2017
Publisher :
Informa UK Limited, 2017.

Abstract

We develop a hierarchical Gaussian process model for forecasting and inference of functional time series data. Unlike existing methods, our approach is especially suited for sparsely or irregularly sampled curves and for curves sampled with non-negligible measurement error. The latent process is dynamically modeled as a functional autoregression (FAR) with Gaussian process innovations. We propose a fully nonparametric dynamic functional factor model for the dynamic innovation process, with broader applicability and improved computational efficiency over standard Gaussian process models. We prove finite-sample forecasting and interpolation optimality properties of the proposed model, which remain valid with the Gaussian assumption relaxed. An efficient Gibbs sampling algorithm is developed for estimation, inference, and forecasting, with extensions for FAR(p) models with model averaging over the lag p. Extensive simulations demonstrate substantial improvements in forecasting performance and recovery of the autoregressive surface over competing methods, especially under sparse designs. We apply the proposed methods to forecast nominal and real yield curves using daily U.S. data. Real yields are observed more sparsely than nominal yields, yet the proposed methods are highly competitive in both settings.

Details

ISSN :
15372707 and 07350015
Volume :
37
Database :
OpenAIRE
Journal :
Journal of Business & Economic Statistics
Accession number :
edsair.doi.dedup.....6eedb51ad63224a21faed0debe9fde5e