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I can perform an adf test on a vector:

library(tseries)
ht <- adf.test(vector, alternative="stationary", k=0)

but I am having trouble performing it on columns of values in a data.frame:

ht <- adf.test(dataframe, alternative="stationary", k=0)

Is there a way of doing this?

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1  
lapply is going to be your friend. The answer is going to be something like lapply(dataframe, adf.test, ...) –  Andrie Jun 25 '12 at 12:11
    
Thanks very much. –  adam.888 Jun 28 '12 at 14:19

2 Answers 2

up vote 2 down vote accepted

To get the pvalues of all the variables in one table you can us ldply from the plyr package.

pvalues=ldply(ht, function(x){ x$p.value })
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ht <- lapply(dataframe, adf.test, alternative="stationary", k=0)

should do the trick as @Andrie pointed out. It will return you a list with an element for each column in the dataframe

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What I am looking for is a function similar to the excellent corr function : df.cor <- cor(df) # get correlations, but for a measure of cointegration rather than correlation. So in a similar way, a dataframe containing a number of dataseries will be converted into a matrix containing adf values for each pair in the dataseries. –  adam.888 Jun 28 '12 at 11:52
    
so something like: ht <- apply(combn(colnames(dataframe,2), 2, function(colnames,data) your.test(y[,colnames]),data=dataframe) or as mentioned in this post stackoverflow.com/questions/5081311/… –  schadr Jan 15 '13 at 6:28

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