Forecasting High-Dimensional Non-Normal Time Series Using Averaged Quantile Regression
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

0

초록

This paper proposes a forecasting method based on averaged quantile regression to improve predictions for non-normally distributed data. Traditional forecasting models often rely on ordinary least squares, assuming normally distributed errors, which can be restrictive in practice. By leveraging quantile regression, our approach provides a more robust alternative that captures the varying effects of predictors across different quantiles of the response variable. The key contribution of this study is to introduce averaged quantile regression (AQR) as a flexible and effective forecasting tool for high-dimensional, non-normally distributed time series. We show that AQR outperforms conventional mean-based forecasting in a factor modeling setting and remains robust across diverse heavy-tailed, skewed, and near-normal distributions. While our method can be applied broadly, we illustrate its effectiveness within the dynamic factor model framework through numerical experiments and real data analysis.

키워드

averaged quantile regressionapproximate dynamic factor modelforecastingeconomic dataC10C38
제목
Forecasting High-Dimensional Non-Normal Time Series Using Averaged Quantile Regression
저자
Kim, Tae YeonOh, Hee-SeokLim, Yaeji
DOI
10.1515/jtse-2024-0014
발행일
2025-08
유형
Article; Early Access
저널명
JOURNAL OF TIME SERIES ECONOMETRICS