Is it possible to accurately forecast the evolution of Brent crude oil prices? An answer based on parametric and nonparametric forecasting methods
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- @Article{Alvarez-Diaz:2020:EE,
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author = "Marcos Alvarez-Diaz",
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title = "Is it possible to accurately forecast the evolution of
Brent crude oil prices? An answer based on parametric
and nonparametric forecasting methods",
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journal = "Empirical Economics",
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year = "2020",
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volume = "59",
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pages = "1285--1305",
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month = sep,
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keywords = "genetic algorithms, genetic programming, ANN, KNN, oil
price, Forecasting, ARIMA, M-GARCH, Neural networks,
Nearest-neighbour method",
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DOI = "doi:10.1007/s00181-019-01665-w",
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abstract = "Can we accurately predict the Brent oil price? If so,
which forecasting method can provide the most accurate
forecasts? To unravel these questions, we aim at
predicting the weekly Brent oil price growth rate by
using several forecasting methods that are based on
different approaches. Basically, we assess and compare
the out-of-sample performances of linear parametric
models (the ARIMA, the ARFIMA and the autoregressive
model), a nonlinear parametric model (the GARCH-in-Mean
model) and different nonparametric data-driven methods
(a nonlinear autoregressive artificial neural network,
genetic programming and the nearest-neighbor method).
The results obtained show that (1) all methods are
capable of predicting accurately both the value and the
directional change in the Brent oil price, (2) there
are no significant forecasting differences among the
methods and (3) the volatility of the series could be
an important factor to enhance our predictive
ability.",
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notes = "Department of Fundaments of Economic Analysis and
History, and Economic Institutions, University of Vigo,
Vigo, Spain",
- }
Genetic Programming entries for
Marcos Alvarez-Diaz
Citations