I am attempting to perform a logistic regression on a dataset which contains a target variable which is boolean ('default'), and two features ('fico_interp', 'home_ownership_int') using logit module in statsmodels. All three values are from the same data frame, 'traindf':

from sklearn import datasets
import statsmodels.formula.api as smf

lmf = smf.logit('default ~ fico_interp + home_ownership_int',traindf).fit()

Which generates an error message:

ValueError: operands could not be broadcast together with shapes (40406,2) (40406,)

How can this happen?

  • one of the columns fico_interp or home_ownership_int is a (x,2) array. try to visualize them
    – farhawa
    May 18, 2015 at 23:25
  • 3
    My guess is that the boolean target variable doesn't work. Try to convert it to int. patsy treats the boolean as categorical variable and converts it to a 2 dimensional response variable which doesn't work for Logit. There should be already an open issue for this in statsmodels, but there is no solution yet.
    – Josef
    May 18, 2015 at 23:32
  • @wajdi Hi Wajdi - that doesn't appear to solve the problem. home_ownership_int is indeed a categorical variable, but when I substitute a continuous variable, I get the same error message. I also note that each variable is a dtype 'object' with the same dimensions - (40407,)
    – GPB
    May 19, 2015 at 13:19

1 Answer 1


The problem is that traindf['default'] contains values that are not numeric.

The following code reproduces the error:

import pandas as pd, numpy as np, statsmodels.formula.api as smf
df = pd.DataFrame(np.random.randn(1000,2), columns=list('AB'))
df['C'] = ((df['B'] > 0)*1).apply(str)
lmf = smf.logit('C ~ A', df).fit()

And the following code is a possible way to fix this instance:

df.replace(to_replace={'C' : {'1': 1, '0': 0}}, inplace = True)
lmf = smf.logit('C ~ A', df).fit()

This post reports an analogous issue.

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