Beginner NLP Question here:
How does the .similiarity method work?
Wow spaCy is great! Its tfidf model could be easier to preprocess, but w2v with only one line of code (token.vector)?! - Awesome!
In his 10 line tutorial on spaCy andrazhribernik show's us the .similarity method that can be run on tokens, sents, word chunks, and docs.
nlp = spacy.load('en') and
doc = nlp(raw_text)
we can do .similarity queries between tokens and chunks.
However, what is being calculated behind the scenes in this
SpaCy already has the incredibly simple
.vector, which computes the w2v vector as trained from the GloVe model (how cool would a
.fasttext method be?).
Is the model similarity model simply computing the cosine similarity between these two w2v-GloVe-vectors or doing something else? The specifics aren't clear in the documentation; any help appreciated!