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  4. Forecasting Day-Ahead Brent Crude Oil Prices Using Hybrid Combinations of Time Series Models

Forecasting Day-Ahead Brent Crude Oil Prices Using Hybrid Combinations of Time Series Models

Author(s)
Hasnain Iftikhar
Aimel Zafar
Paulo Canas Rodrigues
Date Issued
16 de agosto de 2023
Type
Article
Volume
11
Issue
16
Start Page
3548
End Page
3548
DOI
10.3390/math11163548
Abstract
Crude oil price forecasting is an important research area in the international bulk commodity market. However, as risk factors diversify, price movements exhibit more complex nonlinear behavior. Hence, this study provides a comprehensive analysis of forecasting Brent crude oil prices by comparing various hybrid combinations of linear and nonlinear time series models. To this end, first, the logarithmic transformation is used to stabilize the variance of the crude oil prices time series; second, the original time series of log crude oil prices is decomposed into two new subseries, such as a long-run trend series and a stochastic series, using the Hodrick–Prescott filter; and third, two linear and two nonlinear time series models are considered to forecast the decomposed subseries. Finally, the forecast results for each subseries are combined to obtain the final day-ahead forecast result. The proposed modeling framework is applied to daily Brent spot prices from 1 January 2013 to 27 December 2022. Six different accuracy metrics, pictorial analysis, and a statistical test are performed to verify the proposed methodology’s performance. The experimental results (accuracy measures, pictorial analysis, and statistical test) show the efficiency and accuracy of the proposed hybrid forecasting methodology. Additionally, our forecasting results are comparatively better than the benchmark models. Finally, we believe that the proposed forecasting method can be used for other complex financial time data to obtain highly efficient and accurate forecasts.
Subjects

Brent Crude

Series (stratigraphy)...

West Texas Intermedia...

Econometrics

Benchmark (surveying)...

Time series

Nonlinear system

Spot contract

Computer science

Crude oil

Logarithm

Mathematics

Economics

Futures contract

Volatility (finance)

Machine learning

Finance

Engineering

Geodesy

Quantum mechanics

Mathematical analysis...

Paleontology

Physics

Geography

Petroleum engineering...

Biology

Brent Crude

Series (stratigraphy)...

West Texas Intermedia...

Econometrics

Benchmark (surveying)...

Time series

Nonlinear system

Spot contract

Computer science

Crude oil

Logarithm

Mathematics

Economics

Futures contract

Volatility (finance)

Machine learning

Finance

Engineering

Social Sciences Econo...

Social Sciences Decis...

Social Sciences Decis...

Metrics
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