i have a dataset with two columns user posts (posts) and personality type (type) , i need personality type according to posts using this dataset so i used random forest regression for prediction here is my code:-

df = pd.read_csv('personality_types.csv')

count_vectorizer = CountVectorizer(decode_error='ignore')
X = count_vectorizer.fit_transform(df['posts'])
y = df['type'].values

Xtrain, Xtest, Ytrain, Ytest = train_test_split(X, y, test_size=0.33)

random_forest = RandomForestClassifier(n_estimators=100)
random_forest.fit(Xtrain, Ytrain)
Y_prediction = random_forest.predict(Xtest)


random_forest.score(Xtrain, Ytrain)
acc_random_forest = round(random_forest.score(Xtrain, Ytrain) * 100, 2)
print(round(acc_random_forest,2,), "%")


now i want to get prediction from a custom text how can i achive that ? how can i get personality type of a post separately using this model.


Make a new coloumn in the same dataset which is df . Name it as custom_text or user_text or anything else.Take the input store it in that column so that all the rows of that column contains the same values

custom_text = input("Enter Text")
custom_text = count_vectorizer.transform(df['custom_text'])
value_predicted = random_forest.predict(custom_text)

as all values of value_predicted contains the same value


If there's a df with custom text in the same format as the posts, you can do the following:

custom_text = count_vectorizer.transform(df['custom_text'])
value_predicted = random_forest.predict(custom_text)

value_predicted contains the results. Of course, count_vectorizer and random_forest should be trained models from your example.

Also, there's probably a typo in your example, you shoul check performance on the test, not the train:

acc_random_forest = round(random_forest.score(Xtest, Ytest) * 100, 2)
print(round(acc_random_forest,2,), "%")
<Some score>

100% accuracy score looks like an overfitting.

  • tried it! got this ValueError: Number of features of the model must match the input. Model n_features is 14542 and input n_features is 286 – Praveen Sharma Jan 12 at 9:59
  • Looks like that count_vectorizer was changed somewhere. Could it be accidentally replaced by a new version (for example, you do .fit_transform on a new data)? – Mikhail Stepanov Jan 12 at 10:24
  • Also, if there's such a problem, you may edit your question and add this problem. If you work in jupyter notebook, you can try to restart it and run from top to bottom carefully - sometimes this error just disappears because usually it's an error of a wrong state. – Mikhail Stepanov Jan 12 at 10:30

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