Here is the line of code. I know the issue is that I only have a 1-d array but I cannot figure the code for casting it to a 2-d array inline.

def classification_model(model, data, predictors, outcome):
    model.fit(data[predictors],data[outcome])

where data is a 1-d array that has been read from a .csv file.

The classification_model() is invoked like this: classification_model(LogisticRegression(), data, 'HvA', 'FTR') Where FTR and HvA are column names in the .csv and therefore array positions in my data array (Pandas)

Trace is: Traceback (most recent call last):

File "Predict.py", line 112, in <module>
    classification_model(LogisticRegression(), reader, 'HvA', 'FTR')
  File "Predict.py", line 15, in classification_model
    model.fit(data[predictors],data[outcome])
  File "/usr/local/lib/python2.7/dist-packages/sklearn/linear_model/logistic.py", line 1174, in fit
    order="C")
  File "/usr/local/lib/python2.7/dist-packages/sklearn/utils/validation.py", line 531, in check_X_y
    check_consistent_length(X, y)
  File "/usr/local/lib/python2.7/dist-packages/sklearn/utils/validation.py", line 181, in check_consistent_length
    " samples: %r" % [int(l) for l in lengths])
ValueError: Found input variables with inconsistent numbers of samples: [1, 370]

The heading line and first line of data from .csv file

FTHG    FTAG    FTR HTHG    HTAG    HTR HS  AS  HST AST HF  AF  HC  AC  HY  AY  HR  AR  VCH VCD VCA Bb1X2   BbMxH   BbAvH   BbMxD   BbAvD   BbMxA   BbAvA   BbOU    BbMx>2.5    BbAv>2.5    BbMx<2.5    BbAv<2.5    BbAH    BbAHh   BbMxAHH BbAvAHH BbMxAHA BbAvAHA PSCH    PSCD    PSCA    HvA

0   0   1   0   0   1   25  10  5   2   19  11  7   2   3   3   0   1   3.4 3.5 2.25    39  3.5 3.26    3.6 3.42    2.3 2.2 37  1.95    1.86    2.02    1.92    24  0.25    2.02    1.95    1.94    1.9 3.22    3.5 2.36    0

Thanks

  • Does data[col_name].values.reshape(len(data), 1) work? – Michael K Oct 15 '16 at 0:04
  • Great! that did work although the problem didn't really stop there I now get an error in the lines below that is due to the same issue: – Jack Sullivan Oct 16 '16 at 14:26
  • kf = KFold(data.shape[0], n_folds=5) error = [] for train, test in kf: # Filter training data train_predictors = (data[predictors].iloc[train,:]) – Jack Sullivan Oct 16 '16 at 14:26
  • gives : Trace: Traceback (most recent call last): File "Predict.py", line 31, in classification_model train_predictors = (data[predictors].iloc[train,idx]) return self._getitem_tuple(key) File "/usr/lib/python2.7/dist-packages/pandas/core/indexing.py", line 1449, in _getitem_tuple self._has_valid_tuple(tup) File "/usr/lib/python2.7/dist-packages/pandas/core/indexing.py", line 126, in _has_valid_tuple raise IndexingError('Too many indexers') pandas.core.indexing.IndexingError: Too many indexers – Jack Sullivan Oct 16 '16 at 14:28
  • I think .iloc in pandas only takes one indexer. It should just be .iloc[train], not .iloc[train,:] – Michael K Oct 16 '16 at 14:30
up vote 0 down vote accepted
data[col_name].values.reshape(len(data), 1)

As given by Michael K above

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