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Sentiment Predictions Using Deep Belief Networks Model for Odd-Even Policy in Delhi

Author

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  • Sudhir Kumar Sharma

    (KIIT College of Engineering, Gurgaon, India)

  • Ximi Hoque

    (KIIT College of Engineering, Gurgaon, India)

  • Pravin Chandra

    (University School of ICT, GGSIP University, Delhi, India)

Abstract

This paper analyzes the odd-even policy in Delhi using tweets posted on Twitter from December 2015 to August 2016. Twitter is a social network where users post their feelings, opinions and sentiments for any event. This paper transforms the unstructured tweets into structured information using open source libraries. Further objective is to build a model using Deep Belief Networks classification (DBN) to classify unseen tweets on the same context. This paper collects tweets on this event under six hashtags. This study explores three freely available resources / Application Programming Interfaces (APIs) for labeling of tweets for academic research. This paper proposes three sentiment prediction models using the sentiment predictions provided by three APIs. DBN classifier is used to build six models. The performances of these six models are evaluated through standard evaluation metrics. The experimental results reveal that the TextBlob API and proposed Preference Model outperformed than the other four sentiment prediction models.

Suggested Citation

  • Sudhir Kumar Sharma & Ximi Hoque & Pravin Chandra, 2016. "Sentiment Predictions Using Deep Belief Networks Model for Odd-Even Policy in Delhi," International Journal of Synthetic Emotions (IJSE), IGI Global, vol. 7(2), pages 1-22, July.
  • Handle: RePEc:igg:jse000:v:7:y:2016:i:2:p:1-22
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