Not enough input arguments - trainNetwork
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Hi again,
I have attempted to make a 3 layer neural network, it is to classify Iris plants, I have received an error which states:
Error in seriesnetwork (line 34)
net = trainNetwork(trainset,layers,options);
Caused by:
    Error using nnet.internal.cnn.trainNetwork.DLTInputParser>iParseInputArguments
    Not enough input arguments.
I don't know what I am missing/if I have put incorrect values into the code (see below)
clear
clc
%% importing iris data
test                = Iris_data;
%% Labelling iris data as 1,2,3 (setosa, versicolor, virginica)
label               = zeros(150,1);
label(1:50,:)       = 1;
label(51:100,:)     = 2;
label(101:150,:)    = 3;
test(:,5)           = label;
k                   = randperm(150,50);
trainset            = test(k(1:50),:);
test(k,:)           = [];
clear k label % clearing variables
%%
numFeatures         = size(test)-1;
numFeatures         = numFeatures(2);
numClasses          = 3;
layers = [
    featureInputLayer(numFeatures,'Normalization','zscore')
    fullyConnectedLayer(3)
    batchNormalizationLayer
    reluLayer
    fullyConnectedLayer(numClasses)
    softmaxLayer
    classificationLayer];
miniBatchSize    = 25;
options = trainingOptions('adam', ...
    'MiniBatchSize',miniBatchSize, ...
    'Shuffle','every-epoch', ...
    'Plots','training-progress', ...
    'Verbose',false);
net = trainNetwork(trainset,layers,options);
YPred = classify(net,trainset,'MiniBatchSize',miniBatchSize);
YTest = test(:,5);
accuracy = sum(Ypred == YTest)/numel(YTest)
attached is the iris data
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Answers (2)
  Walter Roberson
      
      
 on 24 Aug 2022
        When you pass numeric data as the first parameter to trainnetwork(), then you need to pass four parameters, with responses as the second parameter.
4 Comments
  Walter Roberson
      
      
 on 24 Aug 2022
				net = trainNetwork(trainset, responses, layers, options);
for the case where trainset is a numeric array rather than a dataset or table
  David Ho
    
 on 24 Aug 2022
        
      Edited: David Ho
    
 on 24 Aug 2022
  
      As Walter has pointed out, if your data is in a numeric array, you need to pass predictors and responses separately. 
For a classification task, you also need to specify the labels as a categorical array: after you set the labels on line 9 you can convert them to categorical by inserting the line
labels = categorical(labels);
Then you need to split the labels using the same partitioning as you split your predictors, rather than concatenating them with the predictors: i.e. remove line 10, and add something like
labelsTrain = labels(k(1:50));
labelsTest = labels(k(51:end));
I believe this should help you to train the network as expected, but if you are still experiencing issues, it would be great if you could upload the data you are using so that we can run your code.
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