共同参考解析促进教育知识图谱构建

Tai Wang, Huan Li
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引用次数: 1

摘要

教育知识图谱通过从教科书中提取知识点和关系,为学生和教师提供详细的知识组织和清晰的概念结构。一个高保真的知识图谱是精确教学和个性化学习的必要条件。然而,作为构建知识图谱的重要步骤,共指解析往往被忽略或留到最后。尽管代词在整个语料库中的比例非常小(小于5‰),但这种忽视导致知识图的高保真度下降,也可能导致明显低估焦点和知识点之间的关联减少。本文提出了一种基于规则和语义的方法来解决生物教科书知识图中的共指问题。与其他三种算法相比,它具有更好的查准率和查全率。通过对比共参解析前后构建的两张知识图可以看出,关注点发生了明显变化,更好地与文本对齐,知识点之间的关联也更符合直觉。这一结果表明,共同参考分辨率提高了教育知识图谱的高保真度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coreference Resolution Improves Educational Knowledge Graph Construction
An educational knowledge graph provides students and teachers with detailed knowledge organization and a clear concept structure by extracting knowledge points and relationships from textbooks. A high-fidelity knowledge graph is essential for precise teaching and personalized learning. However, as an important step in knowledge graph construction, coreference resolution is often ignored or left to the end. This neglect leads to a loss in the high fidelity of the knowledge graph and may also cause clearly underestimated focuses and fewer associations between knowledge points, although the ratio of the pronouns to the entire corpus is very small (less than 5‰). In this paper, a rule and semantic-based method is proposed to resolve coreference in the knowledge graph constructed from a biology textbook. Compared with the other three algorithms, it has a better precision ratio and recall ratio. By comparing the two knowledge graphs constructed before and after coreference resolution, it can be seen that the focus has changed significantly to better align with the text, and the associations between the knowledge points are more consistent with intuition. This outcome suggests that coreference resolution improves the high fidelity of an educational knowledge graph.
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