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Let's say I have two linear models in R such that:

lm1 = (x ~ a + b)

lm2 = (x ~ a + b + c)

I want to determine the effect of c on x in terms of

1) significance of effect 2) estimate of effect 3) c's contribution towards overall variation in x (e.g. c's component of the R-squared value)

anova(lm1, lm2) provides me with a significance figure but not the other figures I need, particularly 3 above.

How do I go about computing these figures?

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Do any of the results from googling "partial R^2 R" help you? –  Ben Bolker Feb 23 '13 at 16:55

2 Answers 2

Try comparing summary(lm1) and summary(lm2). R-squared information should be at the bottom.

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I understand this, but I cannot simply use the difference in R-squared values as each model has different degreees of freedom. –  Rful Feb 23 '13 at 11:00

The usual way would be to look at anova(lm1, lm2) and at summary(lm2). I do not understand what you do need of those are not sufficient. The difference in sum of squares and the degrees of freedom if it is a factor variable that accompanies the addition of "c" is provided by the output of anova. The "contribution of 'c' toward x" is a bit vague, but could mean the coefficient (labeled "Estimate" for x provided by summary(lm2) ). You are probably being asked to write something like "the contribution of "c" to the variation in "x" when "a" and "b" are controlled for in a regression analysis is ...."

If you want to decompose sums of squares in a single model just look a:

anova(lm2)
######
Analysis of Variance Table

Response: Y
          Df Sum Sq Mean Sq F value  Pr(>F)  
X1         1 2.2167 2.21672  4.9554 0.03982 *
X2         1 1.2316 1.23156  2.7531 0.11540  
Residuals 17 7.6047 0.44733   
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 

Percentage of total sums of squares in the X1 sums of squares is easily calculated. First look at the object anova(lm2) with str(). It's a list:

 100*anova(lm2)[['Sum Sq']][1]/sum(anova(lm2)[['Sum Sq']])
 #[1] 20.05545
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To explain further: In the model 'lm2', I would like to calculate what percentage of the total R-squared for the model is due to c. –  Rful Feb 23 '13 at 10:57

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