Mixed random forest, cointegration, and forecasting gasoline prices

Volume: 37, Issue: 4, Pages: 1442 - 1462
Published: Oct 1, 2021
Abstract
One of the most successful forecasting machine learning (ML) procedures is random forest (RF). In this paper, we propose a new mixed RF approach for modeling departures from linearity that helps identify (i) explanatory variables with nonlinear impacts, (ii) threshold values, and (iii) the closest parametric approximation. The methodology is applied to weekly forecasts of gasoline prices, cointegrated with international oil prices and exchange...
Paper Details
Title
Mixed random forest, cointegration, and forecasting gasoline prices
Published Date
Oct 1, 2021
Volume
37
Issue
4
Pages
1442 - 1462
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