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Distributed and Parallel Big Textual Data Parsing for Social Sensor Network

Author

Listed:
  • Jung-Ho Um
  • Chang-Hoo Jeong
  • Sung-Pil Choi
  • Seungwoo Lee
  • Hwan-Min Kim
  • Hanmin Jung

Abstract

Recently, due to the popularization of the smartphone and social network service (SNS), many SNS users write their opinions for social events. According to these social phenomena, social sensor network which analyzes social events by utilizing those users' text data is proposed. Parsing is essential module to analyze user's text contents because it gives the understanding of semantics by extracting the words and their classes from texts. However, parsing requires much time because it needs to analyze all context information from the users' text. In addition, as users' text data are generated and transferred in streaming, the required parsing time increases too. This situation occurs that it is hard to parse the text on the single machine. Therefore, to drastically enhance the parsing speed, we propose distributed and parallel parsing system on the MapReduce. It applies the legacy parser to the MapReduce through loose coupling. Also, to reduce communication overheads, the statistical model used by the parser is resided on local cache in each mapper. The experimental result shows that the speed of proposed system is 2–19 times better than that of the legacy parser. As a result, we prove that the proposed system is useful for parsing text data in social sensor network.

Suggested Citation

  • Jung-Ho Um & Chang-Hoo Jeong & Sung-Pil Choi & Seungwoo Lee & Hwan-Min Kim & Hanmin Jung, 2013. "Distributed and Parallel Big Textual Data Parsing for Social Sensor Network," International Journal of Distributed Sensor Networks, , vol. 9(12), pages 525687-5256, December.
  • Handle: RePEc:sae:intdis:v:9:y:2013:i:12:p:525687
    DOI: 10.1155/2013/525687
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