I have a set of search terms like [+dog -"jack russels" +"fox terrier"], [+cat +persian -tabby]. These could be quite long with maybe 30 sub-terms making up each term.
I now have some online news articles extracts such as ["My fox terrier is the cutest dog in the world..."] and ["Has anyone seen my lost persian cat? He went missing ..."]. They're not too long, perhaps 500 characters at most each.
In traditional search engines one expects a huge amount of articles that are pre-processed into indexes, allowing for speed-ups when searching given 'search terms', using set theory/boolean logic to reduce articles to only ones that match the phrases. In this situation, however, the order of my search terms is ~10^5, and I'd like to be able to process a single article at a time, to see ALL the sets of search terms that article would be matched with (i.e. all the + terms are in the text and none of the - terms).
I have a possible solution using two maps (one for the positive sub-phrases, one for the negative sub-phrases), but I don't think it'll be very efficient.
First prize would be a library that solves this problem, second prize is a push in the right direction towards solving this.