Prophesying the Short-Term Dynamics of the Crude Oil Future Price by Adopting the Survival of the Fittest Principle of Improved Grey Optimization and Extreme Learning Machine
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Keywords
crude oil forecasting; survival of the fittest (SOF); extreme learning machine (ELM); differential evolution (DE); particle swarm optimization (PSO); grey wolf optimizer (GWO); improved grey wolf optimizer (IGWO);All these keywords.
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