I am dealing with a problem of text summarization i.e. given a large chunk(s) of text, I want to find the most representative "topics" or the subject of the text. For this, I used various information theoretic measures such as TF-IDF, Residual IDF and Pointwise Mutual Information to create a "dictionary" for my corpus. This dictionary contains important words mentioned in the text.
I manually sifted through the entire 50,000 list of phrases sorted on their TFIDF measure and hand-picked 2,000 phrases (I know! It took me 15 hours to do this...) that are the ground truth i.e. these are important for sure. Now when I use this as a dictionary and run a simple frequency analysis on my text and extract the top-k phrases, I am basically seeing what the subject is and I agree with what I am seeing.
Now how can I evaluate this approach? There is no machine learning or classification involved here. Basically, I used some NLP techniques to create a dictionary and using the dictionary alone to do simple frequency analysis is giving me the topics I am looking for. However, is there a formal analysis I can do for my system to measure its accuracy or something else?