# How to extract adjusted R squared in vars package?

This question is highly correlated with the question from this link. How to extract p-value in var package?

I just would like to take adjusted R squared from VARS package..

I just followed previous example.

``````  library(vars)
symbols=c('^N225','^FTSE','^GSPC')
getSymbols(symbols,src='yahoo', from="2003-04-28", to="2007-10-29")
period="daily"
datap_1<-cbind(A1,B1,C1)
datap_1<-na.omit(datap_1)
datap_1<-(datap_1)^2
vardatap_3<-VAR(datap_1,p=3,type="none")
summary(vardatap_3)
``````

Then the summary can be presented like..

``````      VAR Estimation Results:
=========================
Endogenous variables: N225, FTSE, SP500
Deterministic variables: none
Sample size: 1055
Log Likelihood: 23637.848
Roots of the characteristic polynomial:
0.8639 0.6224 0.6224 0.5711 0.5711 0.5471 0.5471 0.4683 0.4683
Call:
VAR(y = datap_1, p = 3, type = "none")
Estimation results for equation N225:
=====================================
N225 = N225.l1 + FTSE.l1 + SP500.l1 + N225.l2 + FTSE.l2 + SP500.l2 + N225.l3 +        FTSE.l3 + SP500.l3
Estimate Std. Error t value Pr(>|t|)
N225.l1   0.03436    0.03116   1.103    0.270
FTSE.l1   0.47025    0.06633   7.089 2.48e-12 ***
SP500.l1  0.60717    0.07512   8.083 1.74e-15 ***
N225.l2   0.14938    0.03057   4.886 1.19e-06 ***
FTSE.l2  -0.05440    0.06744  -0.807    0.420
SP500.l2 -0.09024    0.07782  -1.160    0.246
N225.l3   0.16809    0.02924   5.749 1.18e-08 ***
FTSE.l3   0.04480    0.06597   0.679    0.497
SP500.l3 -0.01007    0.07941  -0.127    0.899
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 0.0002397 on 1046 degrees of freedom
Multiple R-Squared: 0.3099,     Adjusted R-squared: 0.304
F-statistic:  52.2 on 9 and 1046 DF,  p-value: < 2.2e-16
``````
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Adjusted r squared values can be accessed in output of function `summary()` and list element `varresult`. `varresult` contains summary tables for each of daily returns.

``````> lapply(summary(vardatap_3)\$varresult, "[", "adj.r.squared")
\$daily.returns