I'm using Elasticsearch to build search for ecommerece site.
One index will have products stored in it, in products index I'll store categories in it's other attributes along with. Categories can be multiple but the attribute will have single field value. (E.g. color)
Let's say user types in Black(color) Nike(brand) shoes(Categories)
I want to process this query so that I can extract entities (brand, attribute, etc...) and I can write Request body search.
I have tought of following option,
Applying regex on query first to extract those entities (But with this approach not sure how Fuzzyness would work, user may have typo in any of the entity)
Using OpenNLP extension (But this one only works on indexation time, in above scenario we want it on query side)
Using NER of any good NLP framework. (This is not time & cost effective because I'll have millions of products in engine also they get updated/added on frequent basis)
What's the best way to solve above issue ?
Found couple of libraries which would allow fuzzy text matching in regex. But the entities to find will be many, so what's the best solution to optimise that ?
Still not sure about OpenNLP
NER won't work in this case because there are fixed number of entities so prediction is not right when there are no entity available in the query.