I am a researcher and have about 17,000 free-text documents of which around 30-40% are associated with my outcome. Is there an open-source tool I can use to determine the most common words (or even phrases, but not necessary) that are associated with the outcome, normalizing for the frequency of words that are already occurring? All of the documents are written by health care workers, so it will be important to normalize since there will be technical language across both documents and also would want to screen out words like "the", "it", etc.
What I am trying to do is build a tool using regular expressions or NLP that will then use these words to identify the outcome based on new documents. I'm not planning on spending a huge amount of time customizing an NLP tool, so something with reasonable accuracy is good enough.
I know SAS, SQL (am using postgreSQL), and Python, but could potentially get by in R. I haven't done any NLP before. Is there any software I could use that doesn't have too steep of a learning curve? Thanks!