i have just started learning random forest , so if this sounds stupid i am very sorry for it
I was recently practicing bag of words introduction : kaggle , i want to clear few things :
using vectorizer.fit_transform( " * on the list of cleaned reviews* " )
Now when we were preparing the bag of words array on train reviews we used fit_predict on the list of train reviews , now i know that fit_predict does two things , > first it fits on the data and knows the vocabulary and then it makes vectors on each review .
thus when we used vectorizer.transform( "list of cleaned train reviews " ) this just transform the list of test reviews into the vector for each review .
my question is ..... why not use fit_transform on the test list too !! i mean in the documents it says it leads to overfitting , but wait it does makes sense to me to use it anyways , let me give you my prospective :
when we don't use fit_transform we are essentially saying to make feature vector of test reviews using the most frequent words of train reviews !! Why not make test features array using the most frequent words in the test inself ?
i mean does random cares ? if we give random forest the train feature array and train feature sentiment to work and train itself with and then give it the test feature array won't it just give its prediction on sentiment.
note : i may not have asked in the right way but as you people attempt to answer i will update the question to be more clear ..