I am planning to do my final year project on Natural Language Processing (using NLTK) and my area of interest is Comment Summarization from Social media websites such as Facebook. For example, I am trying to do something like this:

Random Facebook comments in a picture :

  1. Wow! Beautiful.
  2. Looking really beautiful.
  3. Very pretty, Nice pic.

Now, all these comments will get mapped (using a template based comment summarization technique) into something like this:

3 people find this picture to be "beautiful".

The ouput will consist of the word "beautiful" since it is more commonly used in the comments than the word "pretty" (and also the fact that Beautiful and pretty are synonyms).In order to accomplish this task, I am going to use approaches like tracking Keyword frequency and Keyword Scores (In this scenario,"Beautiful" and "Pretty" have a very close score). Is this the best way to do it?

So far with my research, I have been able to come up with the following papers but none of the papers address this kind of comment summarization :

What are the other papers in this field which address a similar issue?

Apart from this, I also want my summarizer to improve with every summarization task.How do I apply machine learning in this regard?


Topic model clustering is what you are looking for.

A search on Google Scholars for "topic model clustering will give you lots of references on topic model clustering.

To understand them, you need to be familiar with approaches for the following tasks, apart from basics of Machine Learning in general.

  1. Clustering: Cosine distance clustering, k-means clustering
  2. Ranking: PageRank, TF-IDF, Mutual Information Gain, Maximal Marginal Relevance
  • Okay thanks,but is my approach of keeping track of the keyword frequencies absolutely wrong? – Aryak Sengupta Oct 13 '14 at 4:00
  • 1
    No, it isn't. AMOF the paper by Chua et. al that you've referred to in the question uses Topic Models. My answer gives you the direction what to look up. There are various approaches for topic modelling. It's for you to figure out what works best for your data – Rishi Dua Oct 13 '14 at 4:40

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.