Currently the fit method fails if you pass a pandas dataframe object to the fit() and predict() adding using the sklearn util check_array (http://scikit-learn.org/stable/modules/generated/sklearn.utils.check_array.html#sklearn.utils.check_array) will by default convert the pandas df to an at 2D numpy array which can then be used without code change from the user.
i.e
In the examples you load data as a data frame
genetic_data = pd.read_csv('https://github.com/EpistasisLab/scikit-rebate/raw/master/data/'
'GAMETES_Epistasis_2-Way_20atts_0.4H_EDM-1_1.tsv.gz',
sep='\t', compression='gzip')
#
# Now we convert to a numpy array
#
features, labels = genetic_data.drop('class', axis=1).values, genetic_data['class'].values
This would be as simple as changing (in fit() and 'predict()`)
self._X = check_array(X)
self._y = column_or_1d(y)
Currently the fit method fails if you pass a pandas dataframe object to the
fit()andpredict()adding using the sklearn util check_array (http://scikit-learn.org/stable/modules/generated/sklearn.utils.check_array.html#sklearn.utils.check_array) will by default convert the pandasdfto an at 2D numpy array which can then be used without code change from the user.i.e
In the examples you load data as a data frame
This would be as simple as changing (in
fit()and 'predict()`)