• Corpus ID: 28868416

A Fall-back Strategy for Sentiment Analysis in Hindi: a Case Study

@inproceedings{Joshi2010AFS,
  title={A Fall-back Strategy for Sentiment Analysis in Hindi: a Case Study},
  author={Aditya Joshi and Pushpak Bhattacharyya},
  year={2010}
}
Sentiment Analysis (SA) research has gained tremendous momentum in recent times. However, there has been little work in this area for an Indian language. We propose in this paper a fall-back strategy to do sentiment analysis for Hindi documents, a problem on which, to the best of our knowledge, no work has been done until now. (A) First of all, we study three approaches to perform SA in Hindi. We have developed a sentiment annotated corpora in the Hindi movie review domain. The first of our… 

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