Sentiment Analysis Approach for Movie Reviews of Natural Language
Journal Title: International Journal of Research in Computer and Communication Technology - Year 2014, Vol 3, Issue 2
Abstract
Sentimental Analysis (SA) or Opinion Mining (OM) refers to the application of NLP, computational linguistics, and text analytics to identify and extract subjective information in source materials. It involves classifying opinions in text into categories like "positive" or "negative" often with an implicit category of "neutral". A classic sentiment application would be tracking what bloggers are saying about a brand like Toyota. SA is also called opinion mining or voice of the customer.
Authors and Affiliations
Pranali Tumsare, Ashish . S. Sambare, Sachin . R. Jain
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