I am playing around with some data from a Kaggle competition on text_analysis, and I keep getting this rather weird error described in the title whenever I try to fit my algorithm. I looked it up, and it had something to with my matrix being to densely populated with nonzero elements while presented as a sparse matrix. I reckon this problem lies with my train_labels below in the code, the labels consist of 24 columns which isn't very common to begin with, labels are floats between 0 and 1 (including 0 and 1). Despite having some idea on what the problem is, I have no idea on how to tackle it properly, and my previous tries haven't worked out so well. Do you guys have any suggestions on how I could solve this?


import numpy as np
import pandas as p
import nltk
from sklearn.feature_extraction.text import TfidfVectorizer
import os
from sklearn.linear_model  import RidgeCV

dir = "C:/Users/Anonymous/Desktop/KAGA FOLDER/Hashtags"

def clean_the_text(data):
    alist = []
    data = nltk.word_tokenize(data)
    for j in data:
    alist = " ".join(alist)

    return alist
def loop_data(data):
    for i in range(len(data)):
        data[i] = clean_the_text(data[i])
    return data      

if __name__ == "__main__":
    print("loading data")
    train_text = loop_data(list(np.array(p.read_csv(os.path.join(dir,"train.csv")))[:,1]))
    test_set = loop_data(list(np.array(p.read_csv(os.path.join(dir,"test.csv")))[:,1]))
    train_labels  = np.array(p.read_csv(os.path.join(dir,"train.csv")))[:,4:]

    vectorizer = TfidfVectorizer(max_features = 10000,strip_accents = "unicode",analyzer = "word")
    ridge_classifier = RidgeCV(alphas = [0.001,0.01,0.1,1,10])
    all_data = train_text + test_set
    train_length  = len(train_text)

    print("fitting Vectorizer")
    print("transforming text")
    all_data = vectorizer.transform(all_data)
    train = all_data[:train_length]
    test = all_data[train_length:]

    print("fitting and selecting models") 
    pred = ridge_classifier.predict(test)

    np.savetxt(dir +"submission.csv", pred, fmt = "%d", delimiter = ",")
    print("submission_file created")


Traceback (most recent call last):
  File "C:\Users\Anonymous\workspace\final_submission\src\linearSVM.py", line 56, in <module>
  File "C:\Python27\lib\site-packages\sklearn\linear_model\ridge.py", line 817, in fit
    estimator.fit(X, y, sample_weight=sample_weight)
  File "C:\Python27\lib\site-packages\sklearn\linear_model\ridge.py", line 724, in fit
    v, Q, QT_y = _pre_compute(X, y)
  File "C:\Python27\lib\site-packages\sklearn\linear_model\ridge.py", line 609, in _pre_compute
    K = safe_sparse_dot(X, X.T, dense_output=True)
  File "C:\Python27\lib\site-packages\sklearn\utils\extmath.py", line 78, in safe_sparse_dot
    ret = a * b
  File "C:\Python27\lib\site-packages\scipy\sparse\base.py", line 303, in __mul__
    return self._mul_sparse_matrix(other)
  File "C:\Python27\lib\site-packages\scipy\sparse\compressed.py", line 520, in _mul_sparse_matrix
    indices = np.empty(nnz, dtype=np.intc)
ValueError: negative dimensions are not allowed

I suspect that my labels are the problem, so here are the labels:

In [12]:

import pandas as pd
import numpy as np
import os
dir = "C:\Users\Anonymous\Desktop\KAGA FOLDER\Hashtags"
labels = np.array(pd.read_csv(os.path.join(dir,"train.csv")))[:,4:]

array([[0.0, 0.0, 1.0, ..., 0.0, 0.0, 0.0],
       [0.0, 0.0, 0.0, ..., 0.0, 0.0, 0.0],
       [0.0, 0.0, 0.0, ..., 0.0, 0.0, 0.0],
       [0.0, 0.0, 0.0, ..., 1.0, 0.0, 0.0],
       [0.0, 0.385, 0.41, ..., 0.0, 0.0, 0.0],
       [0.0, 0.20199999999999999, 0.395, ..., 0.0, 0.0, 0.0]], dtype=object)
In [13]:

(77946L, 24L)
  • Probably not related to your problem, but why is labels.dtype = object? The values you've shown look like all floats.
    – askewchan
    Commented Nov 12, 2013 at 20:33
  • That is indeed weird. Tried to convert it to float with astype, but got an error. Edit: for some reason I could convert it to float now.
    – Learner
    Commented Nov 12, 2013 at 20:36
  • Other (unrelated) errors: RidgeCV is a model for regression problems, not classification problems. Use classifiers such as RidgeClassifierCV instead. Also you should call vectorize.fit only on the training set and then call transform on both the training and the testing data, otherwise the vectorizer is "cheating".
    – ogrisel
    Commented Nov 12, 2013 at 22:03

1 Answer 1


The problem is because of size mismatch.

The train_labels is actually is the classes of all data. The size of train and train_labels should match.

  • I'm sorry, but I'm a bit confused. Since I'm getting the labels out of the train.csv shouldn't the size match with train?
    – Learner
    Commented Nov 12, 2013 at 20:24
  • You are reading form train.csv, but you are doing some processes on the training data. You append training and test data into all_data and get a part of it as train. How you obtain train_length seems confusing to me. Please try to print the size of train this would verify or disprove my theory. Commented Nov 12, 2013 at 20:42
  • The shape of train is: (77946, 10000).
    – Learner
    Commented Nov 12, 2013 at 20:49
  • Do you really have 10000 attributes on a classification, that's big. Commented Nov 12, 2013 at 20:53
  • No, there I was only using one attribute, while the whole dataset has 3 attributes. So I'm definitely screwing up here. Thanks for pointing this out!
    – Learner
    Commented Nov 12, 2013 at 20:57

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