English

Forecasting high-dimensional functional time series with dual-factor structures

Methodology 2024-05-13 v2 Applications Computation

Abstract

We propose a dual-factor model for high-dimensional functional time series (HDFTS) that considers multiple populations. The HDFTS is first decomposed into a collection of functional time series (FTS) in a lower dimension and a group of population-specific basis functions. The system of basis functions describes cross-sectional heterogeneity, while the reduced-dimension FTS retains most of the information common to multiple populations. The low-dimensional FTS is further decomposed into a product of common functional loadings and a matrix-valued time series that contains the most temporal dynamics embedded in the original HDFTS. The proposed general-form dual-factor structure is connected to several commonly used functional factor models. We demonstrate the finite-sample performances of the proposed method in recovering cross-sectional basis functions and extracting common features using simulated HDFTS. An empirical study shows that the proposed model produces more accurate point and interval forecasts for subnational age-specific mortality rates in Japan. The financial benefits associated with the improved mortality forecasts are translated into a life annuity pricing scheme.

Keywords

Cite

@article{arxiv.2109.04146,
  title  = {Forecasting high-dimensional functional time series with dual-factor structures},
  author = {Chen Tang and Han Lin Shang and Yanrong Yang and Yang Yang},
  journal= {arXiv preprint arXiv:2109.04146},
  year   = {2024}
}
R2 v1 2026-06-24T05:49:07.227Z