I'm recently interested in NLP, and would like to build up search engine for product recommendation. (Actually I'm always wondering about how search engine for Google/Amazon is built up)
Take Amazon product as example, where I could access all "word" information about one product:
Product_Name Description ReviewText "XXX brand" "Pain relief" "This is super effective"
gensim packages I could easily compare similarity of different products and make recommendations.
But here's another question I feel very vague about: How to build a search engine for such products?
For example, if I feel pain and would like to search for medicine online, I'd like to type-in
"pain relief" or
"pain", whose searching results should include
So this sounds more like keyword extraction/tagging question? How should this be done in NLP? I know corpus should contain all but single words, so it's like:
["XXX brand" : ("pain", 1),("relief", 1)]
So if I typed in either
"relief" I could get
"XXX brand"; but what about I searched
"pain relief" on browser-based server and make recommendation; but that's kind of do-able?
I still prefer to build up very big lists of keywords at backends, stored in datasets/database and directly visualized in web page of search engine.