通过从文档中提取的地名支持个人关系分析的方法

Fuminori Kimura, Akira Maeda
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引用次数: 0

摘要

可视化从文本中提取的信息有助于直观地理解信息。从文本中提取和可视化个人关系是该方法的一个很有前途的应用。现有的方法通常通过文本中人名的直接共现来估计人际关系。在我们之前的工作中,我们提出了一种从通过地名获得的间接共现关系中提取个人关系的方法。这种方法可以估计不一定有直接关系的人之间的关系。这些关系在网络图中可视化。然而,当人数增加时,就很难把握这些关系了。在本文中,我们提出了一种基于我们之前工作的方法,该方法支持通过地名分析提取的个人关系。我们的目标是通过提供密切相关的人的聚类信息和每个聚类的重要地名来支持分析。这种方法被应用于12世纪的一部日本历史编年史。实验结果与已知的历史事实非常吻合。研究结果还表明,所提出的方法可能能够揭示那些历史尚不清楚的人的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Method for supporting analysis of personal relationships through place names extracted from documents
Visualizing information extracted from text is helpful for intuitively understanding the information. Extracting and visualizing personal relationships from text is one of the promising applications of this approach. Existing methods usually estimate personal relationships from direct co-occurrences of personal names that appear in a text. In our previous work, we proposed a method for extracting personal relationships from indirect co-occurrence relationships obtained through place names. This method can estimate the relationships among persons who do not necessarily have direct relationships. These relationships are visualized in a network graph. However, it becomes difficult to grasp the relationships when the number of persons increases. In this paper, we propose a method that supports analyzing the extracted personal relationships through place names and that is based on our previous work. Our goal is to support analysis by providing the information of the clustering of closely related people and important place names for each cluster. The proposed method was applied to a Japanese historical chronicle written in the 12th century. Experimental results showed a strong correspondence to the known historical facts. The results also indicate that the proposed method might be able to uncover the characteristics of people whose histories are not clearly known yet.
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