Glossary
Variance Decomposition
See Forecast-Error Variance Decomposition (FEVD). In the broader connectedness literature (Diebold and Yilmaz, 2014), variance decompositions from a VAR are interpreted as a network: each entry in the decomposition table represents a weighted, directed link showing what share ...
Definition
See Forecast-Error Variance Decomposition (FEVD). In the broader connectedness literature (Diebold and Yilmaz, 2014), variance decompositions from a VAR are interpreted as a network: each entry in the decomposition table represents a weighted, directed link showing what share of one variable's forecast-error variance is attributable to shocks from another.
Why It Matters
Variance decomposition answers a fundamental question in multivariate analysis: "What drives what, and by how much?" By breaking down each variable's forecast uncertainty into contributions from every other variable, it reveals the directional flow of shocks in a system — essential for understanding contagion in financial markets, policy transmission in macroeconomics, and systemic risk.
Example
In a three-variable VAR (GDP growth, interest rate, stock returns), variance decomposition shows that 60% of the forecast-error variance of stock returns at the 10-quarter horizon is attributable to interest-rate shocks, while only 15% comes from GDP shocks. This identifies interest-rate policy as the dominant driver of stock-market uncertainty.
Related Terms
Software Notes
- SPSS: Not built-in; use the
R pluginwith thevarspackage - R:
fevd()from thevarspackage; e.g.,fevd(var_model, n.ahead = 10) - Stata:
irf createaftervarestimation;irf table fevdto display decomposition