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Forecasting Crude Oil Prices with Major S&P 500 Stock Prices: Deep Learning, Gaussian Process, and Vine Copula

Author(s)
Kim, Jong-MinHan, Hope H.Kim, Sangjin
Issued Date
2022-08
DOI
10.3390/axioms11080375
URI
https://scholarworks.unist.ac.kr/handle/201301/59592
Citation
AXIOMS, v.11, no.8, pp.375
Abstract
This paper introduces methodologies in forecasting oil prices (Brent and WTI) with multivariate time series of major S&P 500 stock prices using Gaussian process modeling, deep learning, and vine copula regression. We also apply Bayesian variable selection and nonlinear principal component analysis (NLPCA) for data dimension reduction. With a reduced number of important covariates, we also forecast oil prices (Brent and WTI) with multivariate time series of major S&P 500 stock prices using Gaussian process modeling, deep learning, and vine copula regression. To apply real data to the proposed methods, we select monthly log returns of 2 oil prices and 74 large-cap, major S&P 500 stock prices across the period of February 2001-October 2019. We conclude that vine copula regression with NLPCA is superior overall to other proposed methods in terms of the measures of prediction errors.
Publisher
MDPI
ISSN
2075-1680
Keyword (Author)
oil pricesS&P 500multivariate time seriesGaussian process modelvine copulaBayesian variable selectionfunctional principal component analysisnonlinear principal component analysis
Keyword
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