Forecasting crude oil price with a new hybrid approach and multi-source data

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Abstract

Faced with the growing research toward crude oil price fluctuations influential factors following the accelerated development of Internet technology, accessible data such as Google search volume index (GSVI) are increasingly quantified and incorporated into forecasting approaches. In this study, we apply multi-scale data that including both traditional economic data and GSVI data reflecting macro and micro mechanisms affecting crude oil price respectively, so as to reduce the forecasting deviation and improve the forecasting accuracy at source. In addition, a new hybrid approach: K-means+KPCA+KELM based on “divide and conquer” strategy is proposed for deeply exploring the information of above multi-data so that improve monthly crude oil price forecasting accuracy. Empirical results can be analyzed from data and method levels. At the data level, GSVI data perform better than economic data in level forecasting accuracy but with opposite performance in directional forecasting accuracy because of “Herd Behavior”, while hybrid data combined their advantages and obtain best forecasting performance in both level and directional accuracy. At the method level, the approaches with “divide and conquer” strategy gain a better forecasting performance, which demonstrates that “divide and conquer” strategy can effectively improve the forecasting performance.

Original languageEnglish
Article number104217
JournalEngineering Applications of Artificial Intelligence
Volume101
DOIs
StatePublished - May 2021

Keywords

  • Crude oil price forecasting
  • Divide and conquer
  • GSVI data
  • Herd behavior
  • Kernel extreme learning machine

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