I have a system that offers a user to search for whatever he wants, and grabbing the content from different places into one page.
I restrict the search results by a keyword/label or a few keywords, so the user won't get junk he never asked for. And I always stick to the main market/label theme(keyword) not to let the search go wrong.
At the beginning all was fine, but then, when I went deeply into developing this system, I started to understand that I cannot predict or filter the content that will be retrieved.
The system is automatic, f.e, when you search for "Christiano Ronaldo" I'd like to get his pictures, videos, twits, news and other stuff. When I construct a page out of all this, to enhance my search engine optimization, I use most repetitive words in the content to provide even more, in links like "See more" or generate more pages based on 1 user search.
I've come to a problem, when the automatic content crawler started to bring bullshit content. I search for "virgin atlantic", it brings me the airline information, which is what I want, using parts of the content and keywords from that information I go looking further, and it brings me Virginia, which is relevant, but not what I want. Then it brings east/west, and then United States, and then it goes deeper and deeper in a wrong direction.
That was a brief. My real question... Is there any algorithm, theories or other stuff to read and is it possible to recognize the theme/direction/meaning/relevancy of a content/keywords to the main theme I set up manually.
So if I say -> go look only for Sport related content, it will not bring me news about Ronaldo's new girlfriend, but his statistics, career data and things like that.
I don't care putting a person to filter the content manually and tell the AI: ACCEPT/DECLINE so it will learn what to bring and what not according to requested theme/pattern.
Neural Network, any other A.I. algorithms to recognize content?