Linking Allusion Words: A Method of Combining Fine‐Grained Co‐citation Relationship and Semantic Features

Q3 Social Sciences
Xiaomin Li, Hao Wang, Jingwen Qiu
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引用次数: 0

Abstract

ABSTRACT It is a common phenomenon for Tang poems to cite the allusions, which can generate a rich relationship network. However, insufficient attention has been paid to investigating the relationship network. To address the research gap, by employing theories and methods of information science, this study presents a method of combining fine‐grained co‐citation relationship and semantic features to link allusion words. We constructed a fine‐grained co‐citation network between allusion words by adding cited positions and sentiments. We then transformed the fine‐grained weights into relational similarities. Moreover, we also leveraged the explanatory text as semantic information for each allusion word, mapping the semantic embedding vectors and calculating the similarities as the semantic similarities. Finally, we applied the link prediction algorithm to implement the allusion word linking. Our experimental results reveal that adding the cited positions and sentiments as well as semantic similarities can improve the performance of allusion word linking, achieving 0.869 on score. Additionally, we explore the linking results from the perspective of the shortest path and find some regular knowledge. Overall, our study extends the application of information science and promotes the development of Chinese traditional cultural resources.
链接典故词:一种细粒度共引关系与语义特征相结合的方法
摘要引用典故是唐诗普遍存在的现象,典故可以形成丰富的关系网络。然而,对关系网络的研究一直不够重视。为了弥补这一研究空白,本研究运用信息科学的理论和方法,提出了一种结合细粒度共引关系和语义特征的典故词链接方法。我们通过添加被引立场和观点,构建了一个细粒度的典故词共引网络。然后,我们将细粒度权重转换为关系相似性。此外,我们还利用解释文本作为每个典故词的语义信息,映射语义嵌入向量并计算相似度作为语义相似度。最后,应用链接预测算法实现典故词链接。我们的实验结果表明,添加被引位置和情感以及语义相似度可以提高典故词连接的性能,得分达到0.869。此外,我们从最短路径的角度对链接结果进行了探索,发现了一些规则知识。总的来说,我们的研究扩展了信息科学的应用,促进了中国传统文化资源的开发。
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来源期刊
Proceedings of the Association for Information Science and Technology
Proceedings of the Association for Information Science and Technology Social Sciences-Library and Information Sciences
CiteScore
1.30
自引率
0.00%
发文量
164
期刊介绍: Information not localized
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