12 / 2018-09-02 06:30:04
Sentiment Analysis on Twitter Data using Apache Spark Platform
Big Data; Apache Spark; Twitter; Sentiment Analysis; Text Classification; Machine Learning techniques
全文待审
Hossam Elzayady / Military Technical College
Sentiment analysis has become an interesting field for both research and industrial domains. The expression sentiment refers to the feelings or thought of the person across some certain issues. Furthermore, it is also considered a direct application for opinion mining. The huge amount of tweets jotted down daily makes Twitter a rich source of textual data and one of the most essential data volumes; therefore, this data has different aims, such as business, industrial or social aims according to the data requirement and needed processing. Actually, the amount of data, which is massive, grows rapidly per second and this is called big data which requires special processing techniques and high computational power in order to perform the required mining tasks. In this work, we perform a sentiment analysis with the help of Apache Spark framework, which is considered an open source distributed data processing platform which utilizes distributed memory abstraction. The goal of using Apache Spark’s Machine learning library (MLIB) is to handle an extraordinary amount of data effectively. We recommend some Preprocessing and Machine learning text feature extraction steps for getting greater results in Sentiment Analysis classification. Finally, our solution estimates the
重要日期
  • 会议日期

    12月18日

    2018

    12月19日

    2018

  • 08月31日 2018

    初稿截稿日期

  • 10月10日 2018

    初稿录用通知日期

  • 10月31日 2018

    终稿截稿日期

  • 12月19日 2018

    注册截止日期

承办单位
Faculty of Engineering, Ain Shams University, Egypt
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