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I'm trying to train a model to predict a continuous numeric variable with the "neuralnet" method in the Caret package. When the below line of code is executed, the following error is thrown:

Error in train.default(Cadence_IVs, Cadence_Train_Response, method = "neuralnet", : wrong model type for classification

NN_Cadence <- train(Cadence_IVs, Cadence_Train_Response, method = "neuralnet", layer1 = 10, layer2 = 5, decay = 0.1, linear.output = TRUE)

This is what the data looks likes, there are 105,000 rows:

RiderID     Index      Date      Time  Average_Gradient  Max_Gradient   Distance   Highest_point  Speed         Power      Cadence
1           27330   3/28/2011  8:19:36       0              6.2          5132.29     12.8          47.9653271    63.3        71.5 
15           991    1/29/2016  6:05:04     -1.5              0            242.9       52.3         10.5608695    267.2       72.6 
15           979    1/29/2016  6:51:19       0               0           581.97      -23           10.03396552   239.2       77.6 
12          49047   4/14/2013  7:45:52       0              3.5           471.2       45.4         18.848        383.6       140.4 
11          46677   5/30/2015  15:25:44    -7.8            -2.6           410.7       124.4        18.66818182   98.3        97.9 

"RiderID" is coded as a Factor, and "Date" is coded as a Date variable. Time is coded as a Character but is excluded from Cadence_IVs. All the other variables are coded as "Numeric" data types, including the Response Variable which is "Cadence."

Cadence_IVs is a matrix of all the columns except for Cadence and Time. Cadence_Train_Response is a one column matrix of the values of Cadence.

Any help would be much appreciated. Let me know if I missed any details that might be helpful.

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    In the current state this is not reproducible. Please dput() the minimal amount of sample data for both objects needed to reproduce the error. I tried to reproduce it with what you have here, but there aren't enough rows and since you didn't dput() the classes and metadata is missing. If you feel the dput() would be too long then try to reproduce your error with builtin datasets. – Hack-R Dec 24 '16 at 22:50
  • Having said that, this error is what you get when you have a factor dependent variable. I know you said it's not a factor, but make sure. – Hack-R Dec 24 '16 at 22:57
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Neural net from caret only deals with regression and takes 3 params i.e. layers 1-3.

You have to feed those parameters in the tune grid. This in an illustration, hope you get the point.

tunegrid <- expand.grid(.layer1=4:6, .layer2=2, .layer3=0)
train(mpg ~ cyl + vs + am + carb, data = mtcars, method="neuralnet", tuneGrid = tunegrid)

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