Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I would like to automate the results creation process when I apply certain modeling techniques. So I'll have different parameters which will be applied (e.g. hierarchical clustering distances and linkage methods). The results will have a matrix form so that I can access individual results by specifying the model parameters (eg. single, euclidean). In a dataframe I could name the columns and rows and access the elements simply by df[rname[1],cname[1]]. As far I as I read its not possible to use data frame objects to store list results. So I need lists for storing list-results. But in lists I can only specify lst$cname[1] and not both dimensions. Am I correct?

# data frame layout for numeric results does not work with list results

# dataframe for results but does not work for results which are lists
paste.1<-function(x,y) paste(x,y,sep=".")

# creating list for results - do not get a good idea to proceed from here Advices??

# results example - could be anything else 
# with a dataframe I could use df1[rname,cname]<-foo(rname,cname)
# with lists I guess its not as easy
ave.u <- hclust(dist(USArrests,"euclidean"), cname[1])
ave.v <- hclust(dist(USArrests,"maximum"), cname[1])
ave.w <- hclust(dist(USArrests,"manhattan"), cname[1])
single.u <- hclust(dist(USArrests,"euclidean"), cname[2])
single.v <- hclust(dist(USArrests,"maximum"), cname[2])
single.w <- hclust(dist(USArrests,"manhattan"), cname[2])

Well I am not sure if there is a solution which I guess must exist. At the end I just want to access the list results via the row names and column names. I know I could transfer row/column names to numerical ones and then play with assigning proper indexes to find my results in a list of length(rname) x length(cname) but since the data frame is so nicely to use I am assuming it must be an easy way to store it more user friendly. It might also be the case that I did not really get well into the concept of lists since I am just starting to play around with R. So my question is: What would be a good strategy to store the structured results (which are lists) using R?

share|improve this question
Is it possible that you can actually make it into a data-frame? As far as I understand, data-frame has to be rectangular, while the list can be of any dimensions. – Sam Mar 8 '11 at 17:33
AFAIK dataframes in r are implemented as lists of the same length. – richiemorrisroe Mar 8 '11 at 18:20
I think this question is terribly confusing, especially the example. A clear description of what you are trying to accomplish would go a long way. – Ista Mar 8 '11 at 18:46

2 Answers 2

up vote 3 down vote accepted

One can have a matrix of lists:

nr <- length(rname)
nc <- length(cname)

m <- matrix(list(), nr, nc, dimnames = list(rname, cname))

m[["u", "ave"]] <- ave.u

# etc.

For example, form the row names, rnm, and column names, cnm, and a data frame, g, of all combinations of their values. Then create a matrix of lists, m :

rnm <- c("euclidean", "maximum", "manhattan")
cnm <- c("ave", "single")
g <- expand.grid(rnm, cnm)
f <- function(i) hclust(dist(USArrests, g[i,1]), g[i,2])
m <- matrix(lapply(1:nrow(g), f), length(rnm), dimnames = list(rnm, cnm))

We can access elements like this:

> m[["euclidean", "single"]]

hclust(d = dist(USArrests, g[i, 1]), method = g[i, 2])

Cluster method   : single 
Distance         : euclidean 
Number of objects: 50
share|improve this answer
Interesting solution, this is what I was thinking of but could not get the way to get it working. expand.grid() is nice to know. The solution looks similar to James suggestion but somehow I feel more comfortable with that matrix alike structures. Thanks – Sebastian Mar 10 '11 at 12:54

You can use the $ operator repeatedly, eg:

mname <-c("euclidean","maximum","manhattan")
lst <- sapply(mname,function(x) sapply(cname,function(y) hclust(dist(USArrests,x),y),simplify=F),simplify=F)

And you can use the following to reference,


hclust(d = dist(USArrests, x), method = y)

Cluster method   : average 
Distance         : euclidean 
Number of objects: 50 

Unfortunately, lst$rname[1]$cname[1] doesn't work, but you can use`$`,list(`$`,list(lst,rname[1])),cname[1]))

hclust(d = dist(USArrests, x), method = y)

Cluster method   : average 
Distance         : euclidean 
Number of objects: 50 


There is actually a simpler version, but it will wear out your square bracket keys!


hclust(d = dist(USArrests, x), method = y)

Cluster method   : average 
Distance         : euclidean 
Number of objects: 50 

Edit 2

The above square bracket notation seems to wrap the object in a list which means it doesn't return the object properly, but hadley's suggestion in the comments is clearer and avoids this problem:

share|improve this answer
Use lapply, not sapply(..., simplify = F). You can also supply a vector to [[: lst[[c("u","ave")]] – hadley Mar 9 '11 at 2:22
@hadley I originally used lapply, but ended up using sapply because it sets names automatically, and with simplify=F is essentially the same as lapply. Good call with using a vector to [[ it is much clearer to read and the method I posted wraps the item in a list so it doesn't return a hclust object. – James Mar 9 '11 at 10:07
Thanks. Exactly the solution I was looking for. Great help. Just need to play around to understand more the apply function family. never would have found the solution using lst[[c(rname[1],cname[1])]] by myself. That helped me a lot. – Sebastian Mar 9 '11 at 14:31

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.