# Running lagged regressions with lapply and two arguments

I am running multiple univariate regressions, like in this reproducible example:

``````require(dynlm)
data(USeconomic)
US<-USeconomic
vars<-colnames(US)[-2]
a<-lapply(colnames(US),function(x) dynlm(log(GNP)~get(x),data=US))
``````

`a` contains a list of 3 univariate regressions. Assume now I´d like to run the same regressions with 3 lags: `l<-c(0,1,4)` where 0 is of course the case I already got. Is there a way to use the vector `l`directly, like

``````# this did not work for me, I obtain multivariate regressions including all lags at once
lapply(colnames(US),function(x) dynlm(log(GNP)~L(get(x),l),data=US),l=l)
``````

After this did not work I tried another approach and added to following vector:

``````lagged_vars <- paste("L(",rep(vars,each=3),",",l,")",sep="")
``````

to get:

``````[1] "L(log(M1),0)" "L(log(M1),1)" "L(log(M1),4)" "L(rs,0)"      "L(rs,1)"
[6] "L(rs,4)"      "L(rl,0)"      "L(rl,1)"      "L(rl,4)"
``````

Unfortunately, I can't run it with the new character vector, get() does not help. I can't understand why cause it works with `vars` but not `lagged_vars` which are both character vectors.

Note, that the `L()` syntax comes from the dynlm package. Side question: If I just print a the coefficients from the regression result remain labelled get(x) – how can I change that?

An i,j loop could be possible solution but I´d rather use lapply or something out of this family...

EDIT: `as.formula` does not work together with `L()` from `dynlm`. I get the this error message:

Error in merge.zoo(log(GNP), L(log(M1), 0), retclass = "list", all = FALSE) : could not find function "L"

EDIT: found an interesting post bei Achim Zeileis referring to this problem.

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## 2 Answers

Here is an approach using `plyr`

``````library(plyr); library(dynlm); library(tseries)

# FUNCTION TO RUN A SINGLE REGRESSION
foo = function(x, l) dynlm(log(GNP) ~ L(get(as.character(x)), l), data = US)

# CREATE PARAMETER GRID
params = expand.grid(x = colnames(US)[-2], l = c(0, 1, 4))

# RUN REGRESSIONS
regressions = mlply(params, foo)
``````

Each element of this list contains details on a single regression from which you can extract your desired output

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+1 for expand grid. Slick. –  Matt Bannert Sep 23 '11 at 8:10
Eh, one side question: What if need R^2 or AIC ? I´d use summary to get these. Would you use `lapply(regressions,summary)` then? –  Matt Bannert Sep 23 '11 at 8:16
Side answer: `getR2 <- function(lm) summary(lm)\$r.squared` and then used lapply. –  Matt Bannert Sep 23 '11 at 9:38
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To construct R formula, you must paste it all together, not just the predictor side of it. So you need something like:

``````formula <- as.formula(
paste("log(GNP)~",
paste("L(",rep(vars,each=3),",",l,")",sep=""),
sep = ""
)
)
``````

and then run

``````dynlm(formula, data = ...)
``````
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Also see this related question –  Tomas Sep 22 '11 at 18:14
Hmm, unfortunately I get an error message, because of L() in the formula, but without as formula `L()` does work. –  Matt Bannert Sep 22 '11 at 20:56
What do you mean by "without as formula"? –  Tomas Sep 22 '11 at 21:03
by without formula I mean, if I just do it directly `L()` is legit: `dynlm(rl~L(rs,1),data=US)` –  Matt Bannert Sep 22 '11 at 21:06
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