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Analyzing the robustness of ARIMA and neural networks as a predictive model of crude oil prices. (2020). Sharma, Sudhi ; Yadav, Miklesh.
In: Theoretical and Applied Economics.
RePEc:agr:journl:v:2(623):y:2020:i:2(623):p:289-300.

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