# ddply with lm() function

Hi guys how can I use ddply function for linear model:

``````x1 <- c(1:10, 1:10)
x2 <- c(1:5, 1:5, 1:5, 1:5)
x3 <- c(rep(1,5), rep(2,5), rep(1,5), rep(2,5))

set.seed(123)
y <- rnorm(20, 10, 3)
mydf <- data.frame(x1, x2, x3, y)

require(plyr)
ddply(mydf, mydf\$x3, .fun = lm(mydf\$y ~ mydf\$X1 + mydf\$x2))
``````

Generates this error:

Error in model.frame.default(formula = mydf\$y ~ mydf\$X1 + mydf\$x2, drop.unused.levels = TRUE) : invalid type (NULL) for variable 'mydf\$X1'

-

Here is what you need to do.

``````mods = dlply(mydf, .(x3), lm, formula = y ~ x1 + x2)
``````

mods is a list of two objects containing the regression results. you can extract what you need from mods. for example, if you want to extract the coefficients, you could write

``````coefs = ldply(mods, coef)
``````

This gives you

``````  x3 (Intercept)         x1 x2
1  1    11.71015 -0.3193146 NA
2  2    21.83969 -1.4677690 NA
``````

EDIT. If you want `ANOVA`, then you can just do

``````ldply(mods, anova)

x3 Df    Sum Sq   Mean Sq   F value     Pr(>F)
1  1  1  2.039237  2.039237 0.4450663 0.52345980
2  1  8 36.654982  4.581873        NA         NA
3  2  1 43.086916 43.086916 4.4273907 0.06849533
4  2  8 77.855187  9.731898        NA         NA
``````
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thank you for the solution ....anova(mods) does not work ?? how can I see anova .... –  jon Sep 23 '11 at 2:27
thank you for the second answer as well ... –  jon Sep 23 '11 at 2:29
look at my edited answer. –  Ramnath Sep 23 '11 at 2:30
llply(mods, anova) is another option. –  MYaseen208 Sep 23 '11 at 2:38
thank you for the second answer as well .. where are the source names gone !! –  jon Sep 23 '11 at 2:39

What Ramnath explanted is exactly right. But I'll elaborate a bit.

`ddply` expects a data frame in and then returns a data frame out. The `lm()` function takes a data frame as an input but returns a linear model object in return. You can see that by looking at the docs for lm via `?lm`:

Value

lm returns an object of class "lm" or for multiple responses of class c("mlm", "lm").

So you can't just shove the lm objects into a data frame. Your choices are either to coerce the output of `lm` into a data frame or you can shove the lm objects into a list instead of a data frame.

So to illustrate both options:

Here's how to shove the lm objects into a list (very much like what Ramnath illustrated):

``````outlist <- dlply(mydf, "x3", function(df)  lm(y ~ x1 + x2, data=df))
``````

On the flip side, if you want to extract only the coefficients you can create a function that runs the regression and then returns only the coefficients in the form of a data frame like this:

``````myLm <- function( formula, df ){
lmList <- lm(formula, data=df)
lmOut <- data.frame(t(lmList\$coefficients))
names(lmOut) <- c("intercept","x1coef","x2coef")
return(lmOut)
}

outDf <- ddply(mydf, "x3", function(df)  myLm(y ~ x1 + x2, df))
``````
-

Use this

``````mods <- dlply(mydf, .(x3), lm, formula = y ~ x1 + x2)
coefs <- llply(mods, coef)

\$`1`
(Intercept)          x1          x2
11.7101519  -0.3193146          NA

\$`2`
(Intercept)          x1          x2
21.839687   -1.467769          NA

anovas <- llply(mods, anova)

\$`1`
Analysis of Variance Table

Response: y
Df Sum Sq Mean Sq F value Pr(>F)
x1         1  2.039  2.0392  0.4451 0.5235
Residuals  8 36.655  4.5819

\$`2`
Analysis of Variance Table

Response: y
Df Sum Sq Mean Sq F value Pr(>F)
x1         1 43.087  43.087  4.4274 0.0685 .
Residuals  8 77.855   9.732
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
``````
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