Dept of Computer Engineering, G. H. Raisoni College of Engineering and Management, Wagholi, Pune
Online published on 9 March, 2017.
Nowadays, when people want to buy any product or service they check for the information from the manufacturer but also want to know the reviews from the user. But the reviews available are in huge amount and its not possible for user to read that much reviews so aspect based sentiment analysis comes into picture specially for drug reviews of chronic diseases as many online blogs and discussion forums are dedicated for that. But extracting useful and relative data from these substantial bodies of texts is challenging. A new probabilistic approach is proposed where we use (PAMM) model to distinguish the aspects/topics which are highly correlated to the class labels or categorical meta-information of a corpus with more exactness. We are going to use the DCRF model to perform simultaneous task of sentence compression and dependency parsing in order to get more accurate result with minimum time complexity and high accuracy.
Drug review, opinion mining, aspect mining, text mining, topic modeling