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EVALUATION OF EXTRACTION METHOD OF IMPORTANT SENTENCE BASED ON ASSOCIATIVE CONCEPT DICTIONARY WITH DISTANCE INFORMATION BETWEEN CONCEPTS

机译:基于关联概念词典的重要句子提取方法的评估,概念之间的距离信息

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In this paper, we propose a method for calculating scores of importance for sentences for text summarization purposes. In this method, scores for sentences are calculated based on quantitative distance information in an associative concept dictionary (consisting of about 160,000 associated concepts) built from the results of association experiments. The dictionary is constructed using basic nouns found in Japanese elementary school textbooks. In our evaluation of the method, we compared the quality of the importance score ranking resulting from our method and other methods using term frequency (tfidf). In order to judge the quality, we used eight articles from the textbooks and carried out an experiment where 40 human subjects chose the five most important sentences from each of the eight articles. The evaluation results show that sentences chosen by our method using association relationships is more comparable to those chosen by human subjects. The results show that summarization accuracy can be improved by applying our method.
机译:在本文中,我们提出了一种用于计算文本总结目的句子的重要性的方法。在该方法中,基于从关联实验结果的关联概念词典中的定量距离信息(由大约160,000个相关概念组成)计算句子的分数。字典是使用日本小学教科书中的基本名词构建。在我们对该方法的评估中,我们比较了我们的方法和使用术语频率(TFIDF)的方法和其他方法产生的重要性分数排名的质量。为了判断质量,我们使用了来自教科书的八篇文章,并进行了一个实验,其中40名人类受试者选择了来自八篇文章中的每一个最重要的句子。评估结果表明,我们使用关联关系选择的方法选择的句子与人类受试者选择的方法更媲美。结果表明,通过应用我们的方法可以提高总结精度。

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