书目检索系统中作者-论文连接的无监督框架

Xin Ding, Hui Zhang, Xiaoyu Guo
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引用次数: 0

摘要

作者姓名歧义会严重影响书目检索系统的准确性,特别是当作者姓名作为搜索关键字时。在本文中,我们提出了一种无监督的方法,通过基于词嵌入的聚类结果将论文与其对应作者联系起来,来解决名称歧义问题。每个聚类代表一个特定研究领域的单词集合。要消除歧义的论文和作者,然后分配他们所属的每个研究领域的概率。我们将这些概率和一些论文和作者的元数据作为特征放入图形模型中,并进行集体推理。实验表明,完全无监督方法对数据库中存在大量噪声的中文书目检索系统具有良好的检索效果。
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An Unsupervised Framework for Author-Paper Linking in Bibliographic Retrieval System
Author name ambiguity can significantly impact the accuracy of a bibliographic retrieval system, especially when author name served as a search keyword. In this paper, we propose an unsupervised approach addressing the name ambiguity problem by linking papers to their corresponding authors based on clustering result of word embeddings. Each cluster represents a collection of words in a certain research area. Papers and authors which to be disambiguated are then assigned a probability of each research area they belong to. We put those probabilities and some metadata of papers and authors as features into a graphic model and do the collective inference. Experiment shows that our entirely unsupervised method perform well for a Chinese Bibliographic Retrieval System even with a huge amount of noisy in its database.
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