Long-term prediction intervals with many covariates

12/15/2020
by   Sayar Karmakar, et al.
0

Accurate forecasting is one of the fundamental focus in the literature of econometric time-series. Often practitioners and policy makers want to predict outcomes of an entire time horizon in the future instead of just a single k-step ahead prediction. These series, apart from their own possible non-linear dependence, are often also influenced by many external predictors. In this paper, we construct prediction intervals of time-aggregated forecasts in a high-dimensional regression setting. Our approach is based on quantiles of residuals obtained by the popular LASSO routine. We allow for general heavy-tailed, long-memory, and nonlinear stationary error process and stochastic predictors. Through a series of systematically arranged consistency results we provide theoretical guarantees of our proposed quantile-based method in all of these scenarios. After validating our approach using simulations we also propose a novel bootstrap based method that can boost the coverage of the theoretical intervals. Finally analyzing the EPEX Spot data, we construct prediction intervals for hourly electricity prices over horizons spanning 17 weeks and contrast them to selected Bayesian and bootstrap interval forecasts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2023

Bootstrap Prediction Inference of Non-linear Autoregressive Models

The non-linear autoregressive (NLAR) model plays an important role in mo...
research
11/08/2017

Long-Term Sequential Prediction Using Expert Advice

For the prediction with expert advice setting, we consider methods to co...
research
11/16/2020

Robust bootstrap prediction intervals for univariate and multivariate autoregressive time series models

The bootstrap procedure has emerged as a general framework to construct ...
research
06/28/2023

UTOPIA: Universally Trainable Optimal Prediction Intervals Aggregation

Uncertainty quantification for prediction is an intriguing problem with ...
research
12/06/2017

Predictive inference for locally stationary time series with an application to climate data

The Model-free Prediction Principle of Politis (2015) has been successfu...
research
10/18/2020

Conformal prediction interval for dynamic time-series

We develop a method to build distribution-free prediction intervals in b...
research
05/25/2023

Forecasting intraday financial time series with sieve bootstrapping and dynamic updating

Intraday financial data often take the form of a collection of curves th...

Please sign up or login with your details

Forgot password? Click here to reset