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 $g$-and-$h$ 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.
翻译:由于需要有效地总结、建模和预测每日内回报的分布特点,以及最近在模拟数据分析领域预测直方图估价时间序列的工作,我们开发了一种时间序列模型,用于预测每日内回报的量值(QF估价)每日摘要;我们将这一模型称为动态量值(DQF)模型;我们提议使用一个价值为1美元和1美元的竞争量衡函数来总结每日内回报的分布情况;我们采用巴伊西亚格式设计DQF模型,以便在计算参数不确定性的同时作出统计推论;为基于抽样的远值(QF估值)每日预测制定高效的MCMC算法;使用10个国际市场指数和大约2 000天的市场外数据,DQF模型的性能比较好,在预测每日内回报率时值时值时值时值时值时值时值时值时值。