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Consider the two data.frames below. In each case I want to extract the intercept, and slopes for the three variables from the associated models.

set.seed(911)

df1 <- data.frame(y=rnorm(10) + 1:10, x=1:10, x2=rnorm(10), x3 = rnorm(10))
model1 <- lm(y ~ x + x2 + x3, data = df1)
summary(model1)
summary(model1)$coefficients[1]
summary(model1)$coefficients[2]
summary(model1)$coefficients[3]
summary(model1)$coefficients[4]



set.seed(911)

df2 <- data.frame(y=rnorm(10) + 1:10, x=1:10, x2=1, x3 = rnorm(10))
model2 <- lm(y ~ x + x2 + x3, data = df2)
summary(model2)
summary(model2)$coefficients[1]
summary(model2)$coefficients[2]
summary(model2)$coefficients[3]
summary(model2)$coefficients[4]

However, in the second example there is no variation in x2 and so the coefficient estimate is NA. Importantly, summary(model2) prints the NA but summary(model2)$coefficients[3] does not return the NA but skips and moves to the next parameter.

But instead I would want:

0.9309032
0.8736204
NA
0.5494

If I do not know in adnavce which coefficients will be NA, i.e. it could be x1,x2 or x2 &x3or even something likex1&x2&x3`, how can I return the result I want?

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1 Answer 1

up vote 2 down vote accepted

Grab them directly from the model. No need for using summary():

> model2$coefficients
(Intercept)           x          x2          x3 
  0.9309032   0.8736204          NA   0.5493671 
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