• DocumentCode
    3689705
  • Title

    360-MAM-Affect: Sentiment analysis with the Google prediction API and EmoSenticNet

  • Author

    Eleanor Mulholland;Paul Mc Kevitt;Tom Lunney;John Farren;Judy Wilson

  • Author_Institution
    Ulster University, School of Creative Arts &
  • fYear
    2015
  • fDate
    6/1/2015 12:00:00 AM
  • Firstpage
    217
  • Lastpage
    221
  • Abstract
    Online recommender systems are useful for media asset management where they select the best content from a set of media assets. We have developed an architecture for 360-MAM-Select, a recommender system for educational video content. 360-MAM-Select will utilise sentiment analysis and gamification techniques for the recommendation of media assets. 360-MAM-Select will increase user participation with digital content through improved video recommendations. Here, we discuss the architecture of 360-MAM-Select and the use of the Google Prediction API and EmoSenticNet for 360-MAM-Affect, 360-MAM-Select´s sentiment analysis module. Results from testing two models for sentiment analysis, SentimentClassifer (Google Prediction API) and EmoSenticNetClassifer (Google Prediction API + EmoSenticNet) are promising. Future work includes the implementation and testing of 360-MAM-Select on video data from YouTube EDU and Head Squeeze.
  • Keywords
    "Sentiment analysis","Videos","Recommender systems","Google","Media","YouTube","Testing"
  • Publisher
    ieee
  • Conference_Titel
    Intelligent Technologies for Interactive Entertainment (INTETAIN), 2015 7th International Conference on
  • Type

    conf

  • Filename
    7325507