I have a dataset which looks like the following
[[(Sky proposal, is, matter), (Sky proposal, is, Mays spokesman)], [(Women, lag, Intel report)], [(Amazon, expected, to unveil)], [(Goldman Sachs, raising, billion)], [(MHP, opens, books)], [(Disney, hurls, magic), (Disney, hurls, moolah)], [(Amazon, offering, loans), (Amazon, offering, to)], [(JPMorgan, seeks, billion), (JPMorgan, seeks, WaMu claims)], [(Comcast, accuses, Discovery)], [(Boeing, sees, sales)], [(BRIEFNetflix Inc, reports, earnings)], [(Broadcom deal, may stunt, Valley investment)], [(Apple, sell, iPads)], [(oil, pull, Street)], [(Fed, tells, Goldman), (Fed, tells, to improve)], [(ideas, undermine, Brexit), (ideas, undermine, Facebook)], [(FX DEBTC, hits, low), (tumbles investors, buy, greenbacks)], [(BRIEFWells Fargo, announces, plan)], [(Red Hat, jumps, IBM shares dip)], [(Nasdaqs tech focus, helps, drive)], [(Amazon, offers, music service)], [(EXCLUSIVEFormer risk chief, warned, Bank)], ...
I am trying to convert each tuple to vector space (word embeddings) using Spacy, however, I am struggling to find an implementation which can iterate through and provide the vector output of each tuple
I am trying to use some function with the following
import Spacy doc = nlp("NLP project test") doc.vector