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I'm trying to use the nnet library to create a multinomial logistic regression model from my training data to see if I can use it to predict my test data.

I set everything up in R using this script:

library(nnet)

folder <- "C:/***/"
trainingfile <- "training-set.txt"
testfile <- "test-set.txt"

train <- read.table(paste(folder, trainingfile, sep=''), sep=",", header=FALSE)
train.classes <- t(train[1:1])
train.data <- train[2:16]

test <- read.table(paste(folder, testfile, sep=''), sep=",", header=FALSE)
test.classes <- t(test[1:1])
test.data <- test[2:16]

train.model <- multinom(V1 ~ ., train, maxit=450) #converges after roughly 430 iterations

This all works well and the function multinom reports convergence.

To use the model to predict to classify the test data I use:

predictions <- predict(train.model, test.data)

However I'm then greeted with the error Error in eval(expr, envir, enclos) : object 'V17' not found. However when I inspect train.model I see that there is indeed an object 'V17'

> train.model
Call:
multinom(formula = V1 ~ ., data = train, maxit = 450)

Coefficients:
  (Intercept)        V2 
B -12.9514837 1.0668464 
C -48.1154774 1.6160071 
D  -2.2901219 1.0062945 
E -39.4371326 0.6848848 
F -20.6759707 0.8613838 
G -21.4471217 1.2858480 
H -17.4302527 0.8102932 
I  -4.7391825 1.3124087 
J -12.3513130 1.1404751 
K -13.9557738 0.7574471 
L  -0.4915034 0.7191369 
M -14.0855382 0.8888810 
N  -0.4372225 0.6041747 
O -18.2596753 1.2708861 
P  -9.8504326 1.2672870 
Q -20.9940977 1.8104502 
R  -5.8030089 0.8677690 
S -12.9944084 0.8097735 
T -32.5636344 1.8977861 
U  -9.1752184 1.6059663 
V -13.5695897 1.4547335 
W  -6.2590220 1.1292715 
X  -4.5939135 0.7603754 
Y -15.6763068 1.6498374 
Z -37.1840564 0.7382329 

*SNIP*

         V17
  1.63319426
  1.93093207
  0.80392847
  1.79189803
  1.32248565
  1.72440154
  1.22022835
  1.03014847
  0.20977345
  2.40335443
  1.17253978
  0.65072776
  0.46675729
  1.16579165
  1.50787334
  1.41267773
  1.71666099
  0.72543894
  0.64857852
  0.32401569
  1.33290027
  0.83846524
  1.02863203
 -0.05005955
  0.13792242

Residual Deviance: 26196.1 
AIC: 27046.1 

This is very strange, I now have no clue why the error is occurring. Anyway to get more data I tried calling summary(train.model) but that just totally hangs R forever. I've tried both the 32b and 64b versions of R 2.15.2 (the latest stable version) and the result is the same. Does anybody have a clue how I can resolve the errors/hangs and how I can rightly predict using the model created by multinom?

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You are creating train.model using the dataset train. Did you perhaps want to use train.data? The columns of train.data are a subset of train, as those in test.data are a subset of those in test. As your code stands, if the column names of train are not present in test.data, then you will get an error like the one you describe. –  BenBarnes Dec 2 '12 at 13:32
    
I don't think that is right. I create a model mapping the first column (the class) to the other columns (data points) for each row in train. Train.data only contains the data points and not the classes. –  Roy T. Dec 2 '12 at 14:40
2  
You should not be checking for the presence of V17 in train.model but rather in the column names of test.data. –  BenBarnes Dec 2 '12 at 15:51
    
@BenBarnes that's the winner, silly me I removed the last column by accident, it should be [2:17] must be because I'm so used to arrays starting at 0. I can now properly use the predict function however summary(train.model) still hangs R. If you could make your comment into an answer I will accept it :). –  Roy T. Dec 2 '12 at 21:53

1 Answer 1

up vote 2 down vote accepted

Summarizing from comments above:

Ensure that the following is true:

all(names(train)[-1] %in% names(test.data)) # [-1] to ignore V1

Otherwise, predict will throw an error.

And to add a little bit of value: In my experience, the reason for summary.multinom taking such a long time is that vcov.multinom is being called and the Hessian is being calculated. If you're making multiple calls to summary(train.model), it would make sense to calculate the Hessian in the call to multinom (which may still take a while):

train.model <- multinom(V1 ~ ., train, maxit=450, Hess = TRUE)
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