Application of Deep Learning to Sentiment Analysis for Cloud Recommender system

Authors

  • N. Veerendra Reddy  Department of Computer Science And Engineering, S.V. University College of Engineering, Tirupathi, Andhra Pradesh, India
  • Dr.M.Humerakhanam  Department of Computer Science And Engineering, S.V. University College of Engineering, Tirupathi, Andhra Pradesh, India
  • A. Khudhus  Department of Computer Science And Engineering, S.V. University College of Engineering, Tirupathi, Andhra Pradesh, India

Keywords:

Sentiment analysis, Deep learning, Dual sentiment, Learning automation, Naive Bayes, Recursive Neural Networks

Abstract

Application of Deep Learning to Sentiment Analysis for Cloud Recommender system

References

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Published

2017-12-31

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Section

Research Articles

How to Cite

[1]
N. Veerendra Reddy, Dr.M.Humerakhanam, A. Khudhus, " Application of Deep Learning to Sentiment Analysis for Cloud Recommender system, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 3, Issue 1, pp.189-194, January-February-2018.