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How to improve oil consumption forecast using google trends from online big data?: the structured regularization methods for large vector autoregressive model

Title
How to improve oil consumption forecast using google trends from online big data?: the structured regularization methods for large vector autoregressive model
Authors
Choi J.-E.Shin D.W.
Ewha Authors
신동완
SCOPUS Author ID
신동완scopus
Issue Date
2022
Journal Title
Communications for Statistical Applications and Methods
ISSN
2287-7843JCR Link
Citation
Communications for Statistical Applications and Methods vol. 29, no. 1, pp. 721 - 731
Keywords
Dimension reductionGoogle trendsOil consumption forecastOnline big dataThe least absolute shrinkage and selection operator (lasso)
Publisher
Korean Statistical Society
Indexed
SCOPUS; KCI scopus
Document Type
Article
Abstract
We forecast the US oil consumption level taking advantage of google trends. The google trends are the search volumes of the specific search terms that people search on google. We focus on whether proper selection of google trend terms leads to an improvement in forecast performance for oil consumption. As the forecast models, we consider the least absolute shrinkage and selection operator (LASSO) regression and the structured regularization method for large vector autoregressive (VAR-L) model of Nicholson et al. (2017), which select automatically the google trend terms and the lags of the predictors. An out-of-sample forecast comparison reveals that reducing the high dimensional google trend data set to a low-dimensional data set by the LASSO and the VAR-L models produces better forecast performance for oil consumption compared to the frequently-used forecast models such as the autoregressive model, the autoregressive distributed lag model and the vector error correction model © 2022 The Korean Statistical Society, and Korean International Statistical Society. All rights reserved
DOI
10.29220/CSAM.2022.29.1.041
Appears in Collections:
자연과학대학 > 통계학전공 > Journal papers
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