English

Dynamic Quantile Function Models

Methodology 2021-05-05 v5 Risk Management Applications

Abstract

Motivated by the need for effectively summarising, modelling, and forecasting the distributional characteristics of intra-daily returns, as well as the recent work on forecasting histogram-valued time-series in the area of symbolic data analysis, we develop a time-series model for forecasting quantile-function-valued (QF-valued) daily summaries for intra-daily returns. We call this model the dynamic quantile function (DQF) model. Instead of a histogram, we propose to use a gg-and-hh quantile function to summarise the distribution of intra-daily returns. We work with a Bayesian formulation of the DQF model in order to make statistical inference while accounting for parameter uncertainty; an efficient MCMC algorithm is developed for sampling-based posterior inference. Using ten international market indices and approximately 2,000 days of out-of-sample data from each market, the performance of the DQF model compares favourably, in terms of forecasting VaR of intra-daily returns, against the interval-valued and histogram-valued time-series models. Additionally, we demonstrate that the QF-valued forecasts can be used to forecast VaR measures at the daily timescale via a simple quantile regression model on daily returns (QR-DQF). In certain markets, the resulting QR-DQF model is able to provide competitive VaR forecasts for daily returns.

Cite

@article{arxiv.1707.02587,
  title  = {Dynamic Quantile Function Models},
  author = {Wilson Ye Chen and Gareth W. Peters and Richard H. Gerlach and Scott A. Sisson},
  journal= {arXiv preprint arXiv:1707.02587},
  year   = {2021}
}

Comments

MATLAB code: https://github.com/wilson-ye-chen/aqua

R2 v1 2026-06-22T20:41:46.599Z