I am interested in analyzing comments on news websites. Most news websites now allow a user to rank the comments by adding an up-vote, by agreeing/disagreeing/recommending a comment, by liking or disliking a comment and in various other ways show their support or disagreement with the comment. I want to use this data semantically, perhaps with some help from NLP to roughly gauge the polarity of opinions expressed. I want to start with only the polarity (supporting or disagreeing with the article) and then perhaps delve into more complicated analysis of other emotions that may have been expressed.
To start, I want to find a way to extract the comment data from news websites including the comment rank and the commentator's information (whatever available). From what I understand, I can use an open source web scraper like BeautifulSoup or Scrapy. I do not have experience using either and do not know if they are the right tools for the purpose. A comment on the right tool (reasonably easy to customize) for this particular task in the problem would be greatly appreciated.
Upon doing some research and talking to some friends, I understand the second part of my problem is often referred to as "sentiment analysis." I expect it to be challenging to process the semantics/sentiment from the comments and that the data will have a lot of noise. For this task in the problem, I am not sure about how to start or what tools to look for. Any advice on this is also greatly appreciated. From glancing over a paper on sentiment analysis, I understand that I may need a tool like SentiWordNet. But I don't know if this is the best tool for the job.
After spelling out the problem to a friend this afternoon, I hit a goldmine of information once I discovered that my search term should be "sentiment analysis." I am going to find more relevant projects/information/papers on this but I would really appreciate comments or advice from anyone who has any experience or idea about such problems.