I am doing text classification and I have a customer reviews dataset which contains text data, the dataset is already lower-cased, word-tokenized and stopwords are also removed. Now the issue is my TFIDF vectorizer is throwing an error when I try to fit_transform the training dataset.
Is there anyway to make tfidf vectorizer work with already tokenized text?
tf_idf_vectorizer = TfidfVectorizer(ngram_range=(1,2),max_df=0.50, stop_words=stop_words_english, lowercase=False)
Features_train_Tfidf = tf_idf_vectorizer.fit_transform(Features_train)
TypeError: expected string or bytes-like object