I'm learning classification. I read about using vectors. But I can't find an algorithm to translate a text with words to a vector. Is it about generating a hash of the words and adding a 1 to the hash location in the vector?
When most people talk about turning text into a feature vector, all they mean is recording the presence of the word (token).
Two main ways to encode a vector. One is explicit, where you have a
Bag of words model
The main article that explains this the best is most likely the bag of words model, which is used extensively for natural language processing applications.
Explicit BoW vector example:
Suppose you have the vocabulary:
Remember, position is important.
The problem with the explicit approach is that if you have hundreds of thousands of vocabulary terms, each document will also have hundreds of thousands of terms (with mostly zero values).
Implicit BoW vector example:
In this case, the sentence
where the order is arbitrary.
If you are learning classification I would start with the easier and more intuitive bag of words representation of your text.
If you are however interested in using a feature hashing method, particularly if you have a large set of data, I would suggest this article which describes the use of hashing in text representation and classification.