通过自回归条件区间模型预测原油价格区间和收益波动率

Forecasting crude oil price intervals and return volatility via autoregressive conditional interval models

Econometric Reviews · 2021
被引 31 · 同刊同年前 8%
人大 A-ABS 3

中文导读

应用自回归条件区间模型预测原油价格区间和波动率,发现其优于传统点预测模型,并基于预测开发了盈利更高的交易策略。

Abstract

Crude oil prices are of vital importance for market participants and governments to make energy policies and decisions. In this paper, we apply a newly proposed autoregressive conditional interval (ACI) model to forecast crude oil prices. Compared with the existing point-based forecasting models, the interval-based ACI model can capture the dynamics of oil prices in both level and range of variation in a unified framework. Rich information contained in interval-valued observations can be simultaneously utilized, thus enhancing parameter estimation efficiency and model forecasting accuracy. In forecasting the monthly West Texas Intermediate (WTI) crude oil prices, we document that the ACI models outperform the popular point-based time series models. In particular, ACI models deliver better forecasts than univariate ARMA models and the vector error correction model (VECM). The gain of ACI models is found in out-of-sample monthly price interval forecasts as well as forecasts for point-valued highs, lows, and ranges. Compared with GARCH and conditional autoregressive range (CARR) models, ACI models are also superior in volatility (conditional variance) forecasts of oil prices. A trading strategy that makes use of the monthly high and low forecasts is further developed. This trading strategy generally yields more profitable trading returns under the ACI models than the point-based VECM.

原油价格区间预测自回归条件区间模型波动率预测WTI原油