Is it possible to use context-sensitive grammar in sentiment analysis? If yes, then how? Basically, I want to do some phrase-level analysis.
Phrase structure and syntactic analysis (via a context-free or context-sensitive grammar, a dependency parser, etc.) would generally be performed in an earlier stage and used as input to sentiment analysis. You'd usually extract features from the parse tree and use in your sentiment classification stage (for example features, see the papers referenced below).
Phrase structure (in the form of parse trees) has been shown to be effective for other downstream tasks (see, for example, Fisher and Roark, 2008, "The utility of parse-derived features for automatic discourse segmentation" and Punyakanok et al., 2008, "The importance of syntactic parsing and inference in semantic role labeling").
I don't know offhand how much difference parse structure makes for sentiment analysis, but intuitively, it seems like it ought to help.
One question: Why are you interested in context-sensitive grammars? Even mildly-context-sensitive formalisms are dramatically more expensive to process (often by orders of magnitude), and - in my opinion - don't generally seem to improve downstream performance enough to warrant that additional expense. But if you have an application that would benefit from context-sensitive analysis vs. context-free, that would be a worthy and interesting goal.
If you decide that context-free phrase structure is sufficient for your needs, I'd recommend you take a look at the Stanford Parser and the BUBS Parser. The Stanford toolkit is more flexible, and BUBS is faster (full disclosure - I'm one of the primary developers of BUBS). I don't have enough experience with any of the context-sensitive implementations to make a recommendation there.