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Paper evolution graph: multi-view structural retrieval for academic literature

机译:纸进化图:学术文学的多视图结构检索

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Academic literature retrieval concerns about the selection of papers that are most likely to match a user's information needs. Most of the retrieval systems are limited to list-output models, in which the retrieval results are isolated from each other. In this paper, we aim to uncover the relationships between the retrieval results and propose a method to build structural retrieval results for academic literature, which we call a paper evolution graph (PEG). The PEG describes the evolution of diverse aspects of input queries through several evolution chains of papers. By using the author, citation, and content information, PEGs can uncover various underlying relationships among the papers and present the evolution of articles from multiple viewpoints. Our system supports three types of input queries: keyword query, single-paper query, and two-paper query. The construction of a PEG consists mainly of three steps. First, the papers are soft-clustered into communities via metagraph factorization, during which the topic distribution of each paper is obtained. Second, topically cohesive evolution chains are extracted from the communities that are relevant to the query. Each chain focuses on one aspect of the query. Finally, the extracted chains are combined to generate a PEG, which fully covers all the topics of the query. Experimental results on a real-world dataset demonstrate that the proposed method can construct meaningful PEGs.
机译:学术文献检索问题对最有可能匹配用户信息需求的论文的选择。大多数检索系统仅限于列表输出模型,其中检索结果彼此隔离。在本文中,我们的目标是揭示检索结果之间的关系,并提出一种建立学术文献构建结构检索结果的方法,我们称纸进化图(PEG)。 PEG通过几个演化链描述了输入查询的不同方面的演变。通过使用作者,引文和内容信息,PEG可以揭示论文之间的各种基础关系,并从多个观点出现文章的演变。我们的系统支持三种类型的输入查询:关键字查询,单纸查询和两纸查询。佩格的建造主要由三个步骤组成。首先,纸张通过Metagraphization将纸张软聚类为社区,在此期间获得每份纸张的主题分布。其次,从与查询相关的社区中提取局部内聚进化链。每个链都侧重于查询的一个方面。最后,将提取的链组合以生成PEG,该PEG完全涵盖查询的所有主题。真实世界数据集上的实验结果表明,所提出的方法可以构建有意义的佩格斯。

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