In the paper that I am trying to implement, it says,
In this work, tweets were modeled using three types of text representation. The first one is a bag-of-words model weighted by tf-idf (term frequency - inverse document frequency) (Section 2.1.1). The second represents a sentence by averaging the word embeddings of all words (in the sentence) and the third represents a sentence by averaging the weighted word embeddings of all words, the weight of a word is given by tf-idf (Section 2.1.2).
I am not sure about the third representation which is mentioned as the weighted word embeddings which is using the weight of a word is given by tf-idf. I am not even sure if they can used together.