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I'm working in R and I want to run correlations on different variables relating to one of my factor variables, service. I really have no idea how to go about this. I've looked at melting and transposing, but neither of those functions give me the format that I need. I'm thinking that I need to split the factor vector into individual vectors (corresponding to each level of service), and then somehow get one numeric variable (sumofcases, for example) to become an observation for the newly created service vector. So one level of service is Hospitalization and another is Case Management. I would then have one vector called "Hospitalization" and another called "case management," and the observations in each column would be the corresponding values for "sumofcases." Then I can run a correlation between two service vectors. This, then, would lead to the creation of numerous dataframes (which is fine if it works).

Here's sample data:

Year   Region      Service         SumofCases
2010     10     Hospitalization       324
2011      1     Case Management       200

And I want it to look like:

Year   Region    Hospitalization      Case Management
2010     10        200                    NA
2011      1        NA                     324

I thought it might also be possible that there is something inside of the correlation function that would allow me to run a correlation between levels of a factor, but I haven't found anything thus far.

@Thomas, in response to your answer:

I think this is definitely moving in the right direction, but how do I deal with uneven factor levels?

I ran this code:

tmp<-MIC$Service levels(tmp) 
levels(tmp)<-c("Ancillary Services", rep("Health Services",2))
cor(as.numeric(tmp),MIC$SumofCases)` 

and got the following error:

Error in levels<-.factor`(*tmp*, value = c("Ancillary Services", "Health Services", : >number of levels differs > cor(as.numeric(tmp),MIC$SumofCases) [1] NA`

Output from running dput(head(MIC)):

dput(head(MIC))

structure(list(FY = structure(c(6L, 1L, 1L, 1L, 1L, 1L), .Label = c("2006", 

"2007", "2008", "2009", "2010", "2011"), class = "factor"), Region = 

structure(c(1L,4L, 6L, 6L, 9L, 2L), .Label = c("1", "10", "2", "3", "4", "5","6", "7", 

"8", "9"), class = "factor"), SumofCases = c(0,1, 1, 2, 11, 14), Service = 

structure(c(17L, 4L, 4L, 4L,4L, 4L), .Label = c("Ancillary Services", "Behavioral 

Treatment","Care Coordination", "Community Living Supports", "Crisis Services", 

"Dental", "ECT", "Employment Services", "Equipment", "Family Services", "Fiscal 

Intermediary Services", "Health Services", "Hospitalization", "Medication",

"Monitoring", "OT/PT/SLT", "Other", "Peer Services", "Prevention", "Residential 

Treatment", "Respite", "Screening & Assessment", "Therapy", "Transportation"), class = 

"factor")), .Names = c("FY", "Region", "SumofCases", "Service"), 

row.names = c(NA,6L), class = "data.frame")

After running the following code I get NA for the cor function.

tmp<-MIC$Service
levels(tmp)
levels(tmp)<-c("Ancillary Services","Behavioral Treatment","Care Coordination",
           "Community Living Supports","Crisis Services","Dental","ECT","Employment Services",         
           "Equipment","Family Services",             
           "Fiscal Intermediary Services","Health Services",             
           "Hospitalization","Medication",                  
           "Monitoring","OT/PT/SLT",                   
           "Other","Peer Services",               
          "Prevention", "Residential Treatment",       
           "Respite","Screening & Assessment",      
         "Therapy","Transportation")
cor(as.numeric(tmp),MIC$SumofCases)

Output:

> cor(as.numeric(tmp),MIC$SumofCases)
[1] NA
share|improve this question
    
what language is this again? –  Markus Mikkolainen May 30 '13 at 20:10
1  
Please provide a reproducible example. –  Sven Hohenstein May 30 '13 at 20:51
    
...can't quite tell what you need without an example, but perhaps you could check out the boot function. cran.r-project.org/doc/contrib/Fox-Companion/… –  Docuemada May 30 '13 at 21:16
    
you need to encode each level of the factor as its own 0 or 1 variable. I wrote a function to do this a while ago but it's really inefficient and I'm sure someone here can come up with something better. –  zap2008 May 30 '13 at 23:50
    
I don't think bootstrapping is appropriate here, it really comes down to a data formatting issue –  idemanalyst May 31 '13 at 12:15

1 Answer 1

I think what you want to do is play with the levels of your factor to turn it into various dummy variables and then do a point-biserial correlation between that dummy and your other variable(s). I've created some mock data here and run the correlation between a variable OtherVar and two different dummy codes of the factor variable:

df <- data.frame(Year=sort(rep(2001:2010,10)),
    Region=rep(1:10,10), 
    Service.Description=factor(sample(1:3,100,replace=TRUE), 
       levels=c(1,2,3), 
       labels=c("Hospitalization","Case Management","Other")),
    OtherVar=rnorm(100,0,1))

# one level of factor
tmp <- df$Service.Description
levels(tmp)
levels(tmp) <- c("Hospitalization",rep("Other",2))
cor(as.numeric(tmp),df$OtherVar)

# another level of factor
tmp <- df$Service.Description
levels(tmp)
levels(tmp) <- c("Other","Case Management","Other")
cor(as.numeric(tmp),df$OtherVar)
share|improve this answer
    
I think this is definitely moving in the right direction, but how do I deal with uneven factor levels? I ran this code: tmp<-MIC$Service levels(tmp) levels(tmp)<-c("Ancillary Services", rep("Health Services",2)) cor(as.numeric(tmp),MIC$SumofCases) and got the following error: Error in levels<-.factor(*tmp*, value = c("Ancillary Services", "Health Services", : >number of levels differs > cor(as.numeric(tmp),MIC$SumofCases) [1] NA –  idemanalyst Jun 3 '13 at 13:17
    
Can you put that in your question...it's pretty hard to read as a comment. –  Thomas Jun 3 '13 at 13:23
    
You forgot your closing brackets on your second line of code levels(tmp) <- c(...). –  Thomas Jun 3 '13 at 16:27
    
The error still occurs –  idemanalyst Jun 3 '13 at 17:03
    
Update your code in your question. –  Thomas Jun 3 '13 at 17:06

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