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The variant auxiliary problem principle method is used to solve the various Ivanov\u2010based LASSO\u2010VAR variants, which is supported by parallel computing with simple closed\u2010form iteration and linear convergence rate. A test case with ten crude oil spot prices is used to demonstrate the improvement in forecasting skills gained from exploring sparse structures. 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