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I am having some trouble with levels... Running the following:

library(mlogit)

panel.datasm = data.frame(
    cbind( 
        round(runif(100, min=1, max=6)), 
        rep(1:20,each=5), runif(100, min=0, max=1), 
        runif(100, min=0, max=6), 
        runif(100, min=2, max=6) , 
        runif(100, min=0, max=1), 
        runif(100, min=0, max=6), 
        runif(100, min=2, max=6)  ))
names(panel.datasm) = c("choice", "id", "data_1991","data_1992",
  "data_1993", "data2_1991", "data2_1992","data2_1993") 


logit.data <- mlogit.data(panel.datasm, id = "id", choice = "choice", 
    varying= 3:5, shape = "wide", sep = "_")

Keep getting the error Error in Ops.factor(data[[choice]], alt) : level sets of factors are different

I have also tried assigning levels manually:

panel.datasm$id= factor(
    panel.datasm$id, 
    levels = sort(as.character(unique(panel.datasm$id)))  )

I have tried a number of things and can't figure out what is going wrong. For comparison take a look at :

data("Electricity", package = "mlogit")
head(Electricity)
Electr <- mlogit.data(Electricity, id = "id", choice = "choice", 
    varying = 3:26, shape = "wide", sep = "")

Which as far as I can tell is identical to my data format. What's going on here? I'm at my whit's end.

share|improve this question
    
I have never been able to get the automatic reshape of mlogit to work. As a result, I have resorted to manually reshaping my data to create the required long format. Good luck. –  Andrie Nov 10 '11 at 21:04
    
PS. Thanks for asking this question. I tried to understand mlogit soon after starting to learn R. I couldn't make head or tail of the code. As far as I can tell, the code works and is algorithmically correct, but from a user's point of view isn't particularly robust. Your question prompted me to research mlogit again. –  Andrie Nov 10 '11 at 21:46
    
Welcome to StackOverflow. –  Andrie Nov 10 '11 at 21:46
    
Perhaps you also want to distinguish between data and data2 with varying= c(data=3:5, data2=6:8) –  BondedDust Nov 10 '11 at 21:49
    
Thanks for all the help. I will try this all out now! –  mmann1123 Nov 10 '11 at 22:09

2 Answers 2

up vote 2 down vote accepted

I believe I have traced the problem. Your choice variables and your alternative variables should be the same.

If you change your the first column of your data.frame to have values between 1991:1993 it will work.

panel.datasm = data.frame(
    cbind( 
        sample(1991:1993, 100, replace=TRUE), 
        rep(1:20,each=5), runif(100, min=0, max=1), 
        runif(100, min=0, max=6), 
        runif(100, min=2, max=6) , 
        runif(100, min=0, max=1), 
        runif(100, min=0, max=6), 
        runif(100, min=2, max=6)  ))
names(panel.datasm) = c("choice", "id", "data_1991","data_1992",
    "data_1993", "data2_1991", "data2_1992","data2_1993") 


logit.data <- mlogit.data(panel.datasm, id = "id", choice = "choice", 
    varying= 3:5, shape = "wide", sep = "_") 

The results:

head(logit.data)
       choice id  alt       data     data2 chid
1.1991  FALSE  1 1991 0.03540498 0.9726110    1
1.1992  FALSE  1 1992 5.85285278 2.7973798    1
1.1993   TRUE  1 1993 5.80795641 3.7360297    1
2.1991   TRUE  1 1991 0.59255235 0.2564928    2
2.1992  FALSE  1 1992 5.81443351 3.0820215    2
2.1993  FALSE  1 1993 2.11699854 5.4161634    2

If you now compare it with Electricity, the difference is obvious. Notice that the choices are 1:4, and each alternative ranges from 1 to 4.

head(Electricity)
  choice id pf1 pf2 pf3 pf4 cl1 cl2 cl3 cl4 loc1 loc2 loc3 loc4 wk1 wk2 wk3 wk4
1      4  1   7   9   0   0   5   1   0   5    0    1    0    0   1   0   0   1
2      3  1   7   9   0   0   0   5   1   5    0    0    1    0   1   1   0   0
3      4  1   9   7   0   0   5   1   0   0    0    0    0    1   0   1   1   0
4      4  1   0   9   7   0   1   1   0   5    0    0    1    0   1   0   0   1
5      1  1   0   9   0   7   0   1   0   5    1    0    0    0   0   1   0   1
6      4  1   0   9   0   7   0   0   1   5    0    0    1    0   0   0   0   1
share|improve this answer
    
Thanks guys. This was helpful. My dataset is weird in that variables don't vary by choice. But this clarified what was going on. I think it will work now! –  mmann1123 Nov 10 '11 at 23:03

The problem is that the row.names created by reshape are not unique and that is causing trouble. Here is a quick fix. You need to add a chid.var that would be unique for each row. I have used the index function from zoo to do that. You can use other ways as well I suppose.

mlogit.data(panel.datasm, choice = 'choice', id = 'id', shape = 'wide', 
 varying = 3:8, sep = "_", chid.var = 1:NROW(index))

        choice id  alt     data      data2
1.1991  FALSE  1 1991 0.4769187 0.97381645
1.1992  FALSE  1 1992 3.2998748 0.70989021
1.1993  FALSE  1 1993 5.6199917 5.53069555
2.1991  FALSE  1 1991 0.3615670 0.02066214
2.1992  FALSE  1 1992 2.0461820 0.41804600
2.1993  FALSE  1 1993 2.2764992 3.93337758
share|improve this answer
    
you are right. your solution is the correct fix. nice one –  Ramnath Nov 10 '11 at 21:40
    
This gets past the first hurdle, but I think will lead to spurious model results. Notice that the value of choice is now always FALSE, whereas it should be TRUE when the respondent choice matches that alternative (i.e. row in the data.frame). –  Andrie Nov 10 '11 at 21:42
    
PS. I apologise that I deleted my first comment - that probably leads to confusion. I wrote a comment, then started to doubt whether I was correct. Then checked my assumptions and posted a new comment. Sorry. –  Andrie Nov 10 '11 at 21:43
    
No problems Andrie. –  Ramnath Nov 10 '11 at 21:45

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