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I am trying to use an algorithm in scikit-learn to predict the output based on a number of inputs. I seem to be getting the error 'too many indices' returned, but cannot figure out why.

CSV File Training:

 1.1    0.2 0.1 0   0.12    0.1
 1.4    0.2 0.1 0.1 0.14    0.1
 0.1    0.1 0.1 0   0.26    0.1
 24.5   0.1 0   0.1 0.14    0.1
 0.1    0.1 0.1 0   0.25    0.1


    fileCSVTraining = genfromtxt('TrainingData.csv', delimiter=',', dtype=None)

    #Define first 6 rows of data as the features
    t = fileCSVTraining[:, 6:]

    #Define which column to put prediction in
    r = fileCSVTraining[:, 0-6:]    
    #Create and train classifier 
    x, y = r, t
    clf = LinearSVC()
    clf = clf.fit(x, y)     
    #New data to predict
    X_new = [1.0, 2.1, 3.0, 2.4, 2.1]
    b = clf.predict(X_new)


 t = fileCSVTraining[:, 6:]
 IndexError: too many indices 
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I think this error will happen if you try to index a 1D array in two dimensions, not completely sure though –  Patashu Feb 10 '13 at 1:20
Maybe not the problem, but you are using delimiter=',' while reading the file, although the values are separated by spaces –  t-8ch Feb 10 '13 at 1:21
Seems to be something to do with the decimal points in the CSV file –  ZeeeeeV Feb 10 '13 at 1:29

4 Answers 4

up vote 2 down vote accepted

Based on the comments, I think you want:

fileCSVTraining = genfromtxt('TrainingData.csv')

Then, to get the "first 6 rows", you would use

t = fileCSVTraining[:6, :]

(I'm assuming your actual data file is longer than you've shown. Your example has only 5 rows.)

I suspect your use of array indexing to get r is also incorrect.

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Please print your x and y variables and you will likely see why the data is invalid and fix accordingly.

Also for the last line:

X_new = [1.0, 2.1, 3.0, 2.4, 2.1]
b = clf.predict(X_new)

should be:

X_new = [[1.0, 2.1, 3.0, 2.4, 2.1]]
b = clf.predict(X_new)

as predict expects a collection of samples (2D array of (n_new_samples, n_features)), not a single sample.

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Array indexing to get r and t was incorrect. Using:

  t = fileCSVTraining[:, 1-0:]  

Got me the required training data, leaving the prediction column.

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It is also important to specify dtype=float because "None" will allow for integers (if there were any in your data) to be included in the array which would force 1-D array instead of a 2-D array. Indexing, as shown, does not work on 1-D.

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