A Graph-Based Approach for Sentiment Sentence Extraction

  • Kazutaka Shimada
  • Daigo Hashimoto
  • Tsutomu Endo
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 5433)

Abstract

As the World Wide Web rapidly grows, a huge number of online documents are easily accessible on the Web. We obtain a huge number of review documents that include user’s opinions for products. To classify the opinions is one of the hottest topics in natural language processing. In general, we need a large amount of training data for the classification process. However, construction of training data by hand is costly. In this paper, we examine a method of sentiment sentence extraction. This task is to classify sentences in documents into opinions and non-opinions. For the task, we use the Hierarchical Directed Acyclic Graph (HDAG) proposed by Suzuki et al. We obtained high accuracy in the sentiment sentence extraction task. The experimental result shows the effectiveness of the method based on the HDAG.

Keywords

Sentiment Analysis Sentiment Sentence Extraction Graph-based Approach Hierarchical Directed Acyclic Graph Similarity 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2009

Authors and Affiliations

  • Kazutaka Shimada
    • 1
  • Daigo Hashimoto
    • 1
  • Tsutomu Endo
    • 1
  1. 1.Department of Artificial IntelligenceKyushu Institute of TechnologyFukuokaJapan

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