I am attempting to build a model that will attempt to identify the interest category / topic of supplied text. For example:
"Enjoyed playing a game of football earlier."
would resolve to a top level category like:
I'm not sure what the correct terminology is for what I am trying to achieve here so Google hasn't turned up any libraries that may be able to help. With that in mind, my approach would be something like:
- Extract features from text. Use tagging to classify each feature / identify names / places. Would probably use NTLK for this, or Topia.
- Run a Naive Bayes classifier for each interest category ("Sport", "Video Games", "Politics" etc.) and get a relevancy % for each category.
- Identify which category has the highest % accuracy and categorise the text.
My approach would likely involve having individual corpora for each interest category and I'm sure the accuracy would be fairly miserable - I understand it will never be that accurate.
Generally looking for some advice on the viability of what I am trying to accomplish, but the crux of my question: a) is my approach is correct? b) are there any libraries / resources that may be of assistance?