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[Keyword] article errors(2hit)

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  • A Method for Reinforcing Noun Countability Prediction

    Ryo NAGATA  Atsuo KAWAI  Koichiro MORIHIRO  Naoki ISU  

     
    PAPER-Natural Language Processing

      Vol:
    E90-D No:12
      Page(s):
    2077-2086

    This paper proposes a method for reinforcing noun countability prediction, which plays a crucial role in demarcating correct determiners in machine translation and error detection. The proposed method reinforces countability prediction by introducing a novel heuristics called one countability per discourse. It claims that when a noun appears more than once in a discourse, all instances will share identical countability. The basic idea of the proposed method is that mispredictions can be corrected by efficiently using one countability per discourse heuristics. Experiments show that the proposed method successfully reinforces countability prediction and outperforms other methods used for comparison. In addition to its performance, it has two advantages over earlier methods: (i) it is applicable to any countability prediction method, and (ii) it requires no human intervention to reinforce countability prediction.

  • A Statistical Model Based on the Three Head Words for Detecting Article Errors

    Ryo NAGATA  Tatsuya IGUCHI  Fumito MASUI  Atsuo KAWAI  Naoki ISU  

     
    PAPER-Educational Technology

      Vol:
    E88-D No:7
      Page(s):
    1700-1706

    In this paper, we propose a statistical model for detecting article errors, which Japanese learners of English often make in English writing. It is based on the three head words--the verb head, the preposition, and the noun head. To overcome the data sparseness problem, we apply the backed-off estimate to it. Experiments show that its performance (F-measure=0.70) is better than that of other methods. Apart from the performance, it has two advantages: (i) Rules for detecting article errors are automatically generated as conditional probabilities once a corpus is given; (ii) Its recall and precision rates are adjustable.