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I have somewhat working code, which is giving me trouble. I seem to get an almost random accuracy_score metric, whereas my printout of predicted values suggests otherwise. I was following this tutorial online and here is what I have written so far:

import os
import pandas as pd
from sklearn.preprocessing import LabelEncoder
from sklearn.model_selection import train_test_split
from sklearn.naive_bayes import GaussianNB
from sklearn.metrics import accuracy_score, confusion_matrix

adult_train = pd.read_csv(os.path.expanduser("~/Desktop/") + "adult_train_srt.csv", sep=',')
print(adult_train.head(100))

le = LabelEncoder()
adult_train['age'] = le.fit_transform(adult_train['age'])
adult_train['workclass'] = le.fit_transform(adult_train['workclass'].astype(str))
adult_train['education'] = le.fit_transform(adult_train['education'].astype(str))
adult_train['occupation'] = le.fit_transform(adult_train['occupation'].astype(str))
adult_train['race'] = le.fit_transform(adult_train['race'].astype(str))
adult_train['sex'] = le.fit_transform(adult_train['sex'].astype(str))
adult_train['hours_per_week'] = le.fit_transform(adult_train['hours_per_week'])
adult_train['native_country'] = le.fit_transform(adult_train['native_country'].astype(str))
adult_train['classs'] = le.fit_transform(adult_train['classs'].astype(str))

cols = [col for col in adult_train.columns if col not in ['classs']]
data = adult_train[cols]
target = adult_train['classs']

data_train, data_test, target_train, target_test = train_test_split(data, target, test_size = 0.1) #, random_state = 42)

gnb = GaussianNB()
pred = gnb.fit(data_train, target_train).predict(data_test)
pred_gnb = gnb.predict(data_test)
print(pred_gnb)

print("Naive-Bayes accuracy: (TN + TP / ALL) ", accuracy_score(pred_gnb, target_test)) #normalize = True
print("""Confusion matrix:
TN - FP
FN - TP
Guessed:
0s +, 1s -
0s -, 1s +
""")
print(confusion_matrix(target_test, pred_gnb))

Prediction = pd.DataFrame({'Prediction':pred_gnb})

result = pd.concat([adult_train, Prediction], axis=1)
print(result.head(10))

I am at a loss, I have no way of understanding whether or not my dataframe concatenation is working or if the accuracy_score metric is solving something else, because I get outputs like so: enter image description here

This particular instance it is saying there are 7 true negatives (OK), 1 false positive (???), 2 false negatives (O.K), and 0 true positives (???, but there was one guessed correct?). The [classs] column is what the [Prediction] columnn is guessing.

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    Check documentation. accueacy_score(y_true, y_pred) you should pass first the target and second the predictions. As you do in the confusion_matrix.
    – OSainz
    Jul 19 '19 at 8:04
  • How should I go about getting a matrix with of the full dataset rather than just the target series and prediction series? My ultimate goal was that. Jul 19 '19 at 8:24
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result = pd.concat([adult_train, Prediction], axis=1)

Here the Prediction dataframe, should not be concatenated with adult_train, Prediction is the result of prediction on the test set data_set

pred_gnb = gnb.predict(data_test)

So, I think you should concatenate the data_test, the target_test and the Prediction, try this and it may work

result = pd.concat([pd.DataFrame(data_test), pd.DataFrame(target_test), Prediction], axis=1)
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  • O.K., I understand you, however the suggested code does not align the prediction column with the rest of the df. Do I need to do two concat's? Jul 19 '19 at 8:29
  • 1
    that's it's goal, when evaluating your model, you should treat the test set and the training set separately, so the test prediction it shouldn't align with all the dataframe, juste the data_test Jul 19 '19 at 9:03

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