I have some training data (TRAIN) and some test data (TEST). Each row of each dataframe contains an observed class (X) and some columns of binary (Y). BernoulliNB predicts the probability of X given Y in the test data based on the training data. I am trying to look up the probability of the observed class of each row in the test data (Pr).
Edit: I used Antoine Zambelli's advice to fix the code:
from sklearn.naive_bayes import BernoulliNB
BNB = BernoulliNB()
# Training Data
TRAIN = pd.DataFrame({'X' : [1,2,3,9],
'Y1': [1,1,0,0],
'Y4': [1,0,0,0]})
# Test Data
TEST = pd.DataFrame({'X' : [5,0,1,1,1,2,2,2,2],
'Y1': [1,1,0,1,0,1,0,0,0],
'Y2': [1,0,1,0,1,0,1,0,1],
'Y3': [1,1,0,1,1,0,0,0,0],
'Y4': [1,1,0,1,1,0,0,0,0]})
# Add the information that TRAIN has none of the missing items
diff_cols = set(TEST.columns)-set(TRAIN.columns)
for i in diff_cols:
TRAIN[i] = 0
# Split the data
Se_Tr_X = TRAIN['X']
Se_Te_X = TEST ['X']
df_Tr_Y = TRAIN .drop('X', axis=1)
df_Te_Y = TEST .drop('X', axis=1)
# Train: Bernoulli Naive Bayes Classifier
A_F = BNB.fit(df_Tr_Y, Se_Tr_X)
# Test: Predict Probability
Ar_R = BNB.predict_proba(df_Te_Y)
df_R = pd.DataFrame(Ar_R)
# Rename the columns after the classes of X
df_R.columns = BNB.classes_
df_S = df_R .join(TEST)
# Look up the predicted probability of the observed X
# Skip X's that are not in the training data
def get_lu(df):
def lu(i, j):
return df.get(j, {}).get(i, np.nan)
return lu
df_S['Pr'] = [*map(get_lu(df_R), df_S .T, df_S .X)]
This seemed to work, giving me the result (df_S):
This correctly gives a "NaN" for the first 2 rows because the training data contains no information about classes X=5 or X=0.