# calculating R-squared in a multivariate analysis using glm in R

I am doing a backward elimination in R using the step() function. Now, I am trying to look at how each independent variable is ranked together with their AIC, F, and P values.

``````step(Mod1,direction="backward",test="F")

Df Deviance    AIC  F value    Pr(>F)
<none>                     6127.4 6215.4
- as.factor(var2)      3   6133.6 6215.6   2.6103 0.0497127 *
- as.factor(var28)     2   6131.7 6215.7   2.7292 0.0653326 .
- as.factor(var32)     2   6131.8 6215.8   2.7794 0.0621388 .
- as.factor(var30)     1   6130.3 6216.3   3.6075 0.0575550 .
- as.factor(var20)     1   6131.9 6217.9   5.7262 0.0167368 *
- as.factor(var9)      1   6133.5 6219.5   7.6627 0.0056507 **
- as.factor(var15)     1   6133.7 6219.7   7.8952 0.0049691 **
- as.factor(var10)     1   6133.8 6219.8   8.1314 0.0043621 **
- as.factor(var14)     1   6134.7 6220.7   9.2528 0.0023592 **
- as.factor(var33)     2   6137.1 6221.1   6.0993 0.0022552 **
- as.factor(var16)     1   6135.9 6221.9  10.6794 0.0010881 **
- as.factor(var19)     4   6142.5 6222.5   4.7684 0.0007674 ***
- as.factor(var23)     2   6138.9 6222.9   7.2488 0.0007158 ***
- as.factor(var24)     2   6139.0 6223.0   7.3060 0.0006761 ***
- as.factor(var13)     1   6139.3 6225.3  14.9746 0.0001099 ***
- as.factor(var11)     1   6141.0 6227.0  17.1558 3.480e-05 ***
- as.factor(var6)      2   6149.3 6233.3  13.8110 1.030e-06 ***
- as.factor(var22)     2   6150.6 6234.6  14.6341 4.534e-07 ***
- as.factor(var8)      4   6155.4 6235.4   8.8624 3.893e-07 ***
- as.factor(var3)      4   6172.7 6252.7  14.3214 1.189e-11 ***
- as.factor(var1)      1   6230.8 6316.8 130.7555 < 2.2e-16 ***
- as.factor(var5)      4   6245.6 6325.6  37.3782 < 2.2e-16 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
``````

Next, I would like to

i) rank variables according to p-values from most (top) to less significant (bottom)

ii) get the R-squared for each independent variable and to be shown in the last column

I would be grateful if someone can help me on these.

Thanks,

Baz

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This looks like the final output of a backwards elimination where `<none>` is the best option. It sounds like you are looking for an ANOVA table from this fitted model. Is this true. – mnel Aug 14 '12 at 6:13
@mnel: yes..you are right, it is the final output of a backward elinimation. – baz Aug 14 '12 at 6:23
So, you are just after the ANOVA table from this final model? – mnel Aug 14 '12 at 6:24
@mnel: if its going to provide me with the r-squared for each variable, then yes! – baz Aug 14 '12 at 6:26
What do you mean by the r-squared for each variable? The contribution to the sum of squares for each variable? The R-squared for each variable if it were fitted in a single linear model (I hope not). – mnel Aug 14 '12 at 6:43

Save the results as a model.

``````final_model <- step(Mod1,direction="backward",test="F")
# drop1 will give you the "type II anova" (the effect of dropping)
drop_anova <- drop1(final_model, test = 'F')
#  or the more traditional `anova` which gives the SS as
# if they are sequentially  added to the model
anova(final_model)
``````

You can use these to rank by p-value. See my comment regarding r-squared for each variable -- I don't know what you mean by this.

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