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Variance decomposition or forecast error variance decomposition indicates the amount of information each variable contributes to the other variables in a vector autoregression (VAR) models.[1] Variance decomposition determines how much of the forecast error variance of each of the variable can be explained by exogenous shocks to the other variables.
where , and are dimensional column vectors, is by dimensional matrix and , and are dimensional column vectors.
Calculate the mean squared error of the h-step forecast of variable j, ,
where is the jth column of and the subscript refers to that element of the matrix. where is a lower triangular matrix obtained by a Cholesky decomposition of such that . where so is by dimensional matrix. is the covariance matrix of the errors .
The amount of forecast error variance of variable accounted for by exogenous shocks to variable is given by