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Can Symbol Grounding Improve Low-Level NLP? Word Segmentation as a Case Study

机译:符号接地能否改善低电平NLP?分词案例研究

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We propose a novel framework for improving a word segmenter using information acquired from symbol grounding. We generate a term dictionary in three steps: generating a pseudo-stochastically segmented corpus, building a symbol grounding model to enumerate word candidates, and filtering them according to the grounding scores. We applied our method to game records of Japanese chess with commentaries. The experimental results show that the accuracy of a word segmenter can be improved by incorporating the generated dictionary.
机译:我们提出了一种新颖的框架,用于使用从符号基础获取的信息来改进分词器。我们分三个步骤生成术语词典:生成伪随机分段的语料库,建立符号基础模型以枚举候选单词,并根据基础分数对它们进行过滤。我们将我们的方法应用于带有注释的日本象棋的游戏记录。实验结果表明,通过合并生成的字典可以提高分词器的准确性。

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