7

I'm totally new to python. I've used some code found online and I tried to work on it. So I'm creating a text-document-matrix and I want to add some extra features before training a logistic regression model.

Although I've checked my data with R and I get no error, when I run the logistic regression I get the error "ValueError: Array contains NaN or infinity." I'm not getting the same error when I do not add my own features. My features are in the file "toPython.txt".

Mind the two calls to assert_all_finite function that returns "None"!

Below is the code I use and the output I get:

def _assert_all_finite(X):
if X.dtype.char in np.typecodes['AllFloat'] and not np.isfinite(X.sum()) and not np.isfinite(X).all():
    raise ValueError("Array contains NaN or infinity.")

def assert_all_finite(X):
_assert_all_finite(X.data if sparse.issparse(X) else X)

def main():

print "loading data.."
traindata = list(np.array(p.read_table('data/train.tsv'))[:,2])
testdata = list(np.array(p.read_table('data/test.tsv'))[:,2])
y = np.array(p.read_table('data/train.tsv'))[:,-1]

tfv = TfidfVectorizer(min_df=12,  max_features=None, strip_accents='unicode',  
    analyzer='word',stop_words='english', lowercase=True,
    token_pattern=r'\w{1,}',ngram_range=(1, 1), use_idf=1,smooth_idf=1,sublinear_tf=1)

rd = lm.LogisticRegression(penalty='l2', dual=True, tol=0.0001, 
                         C=1, fit_intercept=True, intercept_scaling=1.0, 
                         class_weight=None, random_state=None)

X_all = traindata + testdata
lentrain = len(traindata)

f = np.array(p.read_table('data/toPython.txt'))
indices = np.nonzero(~np.isnan(f))
b = csr_matrix((f[indices], indices), shape=f.shape, dtype='float')

print b.get_shape
**print assert_all_finite(b)**
print "fitting pipeline"
tfv.fit(X_all)
print "transforming data"
X_all = tfv.transform(X_all)
print X_all.get_shape

X_all=hstack( [X_all,b], format='csr' )
print X_all.get_shape

**print assert_all_finite(X_all)**

X = X_all[:lentrain]
print "3 Fold CV Score: ", np.mean(cross_validation.cross_val_score(rd, X, y, cv=3, scoring='roc_auc'))

And the output is:

loading data..
<bound method csr_matrix.get_shape of <10566x40 sparse matrix of type '<type 'numpy.float64'>'
with 422640 stored elements in Compressed Sparse Row format>>
**None**
fitting pipeline
transforming data
<bound method csr_matrix.get_shape of <10566x13913 sparse matrix of type '<type 'numpy.float64'>'
with 1450834 stored elements in Compressed Sparse Row format>>
<bound method csr_matrix.get_shape of <10566x13953 sparse matrix of type '<type 'numpy.float64'>'
with 1873474 stored elements in Compressed Sparse Row format>>
**None**
3 Fold CV Score: 
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
File "C:\Python27\lib\site-packages\spyderlib\widgets\externalshell\sitecustomize.py", line 523, in runfile
execfile(filename, namespace)
File "C:\Users\Stergios\Documents\Python\beat_bench.py", line 100, in <module>
main()
File "C:\Users\Stergios\Documents\Python\beat_bench.py", line 97, in main
print "3 Fold CV Score: ", np.mean(cross_validation.cross_val_score(rd, X, y, cv=3, scoring='roc_auc'))
File "C:\Python27\lib\site-packages\sklearn\cross_validation.py", line 1152, in cross_val_score
for train, test in cv)
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", line 517, in __call__
self.dispatch(function, args, kwargs)
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", line 312, in dispatch
job = ImmediateApply(func, args, kwargs)
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", line 136, in __init__
self.results = func(*args, **kwargs)
File "C:\Python27\lib\site-packages\sklearn\cross_validation.py", line 1064, in _cross_val_score
score = scorer(estimator, X_test, y_test)
File "C:\Python27\lib\site-packages\sklearn\metrics\scorer.py", line 141, in __call__
return self._sign * self._score_func(y, y_pred, **self._kwargs)
File "C:\Python27\lib\site-packages\sklearn\metrics\metrics.py", line 403, in roc_auc_score
fpr, tpr, tresholds = roc_curve(y_true, y_score)
File "C:\Python27\lib\site-packages\sklearn\metrics\metrics.py", line 672, in roc_curve
fps, tps, thresholds = _binary_clf_curve(y_true, y_score, pos_label)
File "C:\Python27\lib\site-packages\sklearn\metrics\metrics.py", line 504, in _binary_clf_curve
y_true, y_score = check_arrays(y_true, y_score)
File "C:\Python27\lib\site-packages\sklearn\utils\validation.py", line 233, in check_arrays
_assert_all_finite(array)
File "C:\Python27\lib\site-packages\sklearn\utils\validation.py", line 27, in _assert_all_finite
raise ValueError("Array contains NaN or infinity.")
ValueError: Array contains NaN or infinity.

Any ideas? Thank you!!

5
  • It seems b is getting some NaN elements from the following assignment. b = csr_matrix((f[indices], indices), shape=f.shape, dtype='float') . Here is the csr_matrix documentation. Sep 22, 2013 at 20:01
  • @TharinduRusira The same happens if I use b=csr_matrix(f, dtype='float') directly after loading data in f.
    – Stergios
    Sep 22, 2013 at 20:15
  • Does your data file have missing values? Sep 22, 2013 at 20:30
  • @TharinduRusira No, I checked this from R using any(is.na(data)) and got FALSE.
    – Stergios
    Sep 22, 2013 at 20:41
  • There seems to be a problem with my data (despite R is saying that there are no NAs). I tried doing the same with manually created data and it worked. Thanks!!
    – Stergios
    Sep 25, 2013 at 15:04

3 Answers 3

9

I found that doing the following, assuming sm is a sparse matrix (mine was CSR matrix, please say something about other types if you know!) worked quite nicely:

Manually replacing nans with appropriate numbers in data vector:

In [4]: np.isnan(matrix.data).any()
Out[4]: True

In [5]: sm.data.shape
Out[5]: (553555,)

In [6]: sm.data = np.nan_to_num(sm.data)

In [7]: np.isnan(matrix.data).any()
Out[7]: False

In [8]: sm.data.shape
Out[8]: (553555,)

So we no longer have nan values, but matrix explicitly encodes those zeros as valued indices.

Removing explicitly encoded zero values from sparse matrix:

In [9]: sm.eliminate_zeros()

In [10]: sm.data.shape
Out[10]: (551391,)

And our matrix actually got smaller now, yay!

3
  • Excellent. This worked nicely for solving a data input Value Error issue in sci-kit learn.
    – dreab
    Sep 28, 2017 at 8:27
  • @dreab Out of curiousity, could you elaborate on the issue in scikit?
    – NirIzr
    Sep 28, 2017 at 17:31
  • 1
    @nirlzr I was trying to use a preprocessing function quantile_transform, and I was getting value errors because the dataset has lots of nans. I also didn't want those points considered as zeros Your solution above worked nicely. And most importantly I wanted to preserve the shape of the data because it is a gridded dataset.
    – dreab
    Sep 29, 2017 at 8:13
1

This usually happens when you have missing values in your data or as a result of your processing.

First, find the cells in the sparse matrix X with Nan or Inf value:

def find_nan_in_csr(self, X):

    X = coo_matrix(X)
    for i, j, v in zip(X.row, X.col, X.data):
        if (np.isnan(v) or np.isinf(v)):
            print(i, j, v)
    return None

This function will provide you the row and column indexes in the sparse matrix where the values are problematic.
Then, to "fix" the values - it depends what caused these values (missing values, etc.).

EDIT: Note that sklearn is usually using dtype=np.float32 for maximum efficiency, so it converts sparse matrix to np.float32 (by X = X.astype(dtype = np.float32)) when it can. In this conversion from float64 to np.float32, a very high number (e.g.,2.9e+200) are converted to inf.

0

I usually use this function:

x = np.nan_to_num(x)

Replace nan with zero and inf with finite numbers.

0

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