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Reducing semantic complexity in distributed digital libraries: treatment of term vagueness and document re-ranking

机译:降低分布式数字图书馆中的语义复杂性:术语模糊性和文档处理 重新排名

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摘要

The general science portal "vascoda" merges structured, high-quality information collections from more than 40 providers on the basis of search engine technology (FAST) and a concept which treats semantic heterogeneity between different controlled vocabularies. First experiences with the portal show some weaknesses of this approach which come out in most metadata-driven Digital Libraries (DLs) or subject specific portals. The purpose of the paper is to propose models to reduce the semantic complexity in heterogeneous DLs. The aim is to introduce value-added services (treatment of term vagueness and document re-ranking) that gain a certain quality in DLs if they are combined with heterogeneity components established in the project “Competence Center Modeling and Treatment of Semantic Heterogeneity”. Two methods, which are derived from scientometrics and network analysis, will be implemented with the objective to re-rank result sets by the following structural properties: the ranking of the results by core journals (so-called Bradfordizing) and ranking by centrality of authors in co-authorship networks. The methods, which will be implemented, focus on the query and on the result side of a search and are designed to positively influence each other. Conceptually, they will improve the search quality and guarantee that the most relevant documents in result sets will be ranked higher. The central impact of the paper focuses on the integration of three structural value-adding methods, which aim at reducing the semantic complexity represented in distributed DLs at several stages in the information retrieval process: query construction, search and ranking and re-ranking. (author's abstract)
机译:通用科学门户网站“ vascoda”基于搜索引擎技术(FAST)和可处理不同受控词汇之间的语义异质性的概念,合并了来自40多个提供商的结构化,高质量信息集合。门户的初步经验表明,这种方法存在一些弱点,这种弱点在大多数元数据驱动的数字图书馆(DL)或特定主题的门户中都有。本文的目的是提出减少异构DL中语义复杂度的模型。目的是引入将DL与“能力中心建模和语义异质性处理”项目中建立的异质性成分相结合的增值服务(术语模糊性和文档重新排名),从而在DL中获得一定的质量。将采用两种方法,它们分别来自科学计量学和网络分析,其目的是通过以下结构属性对结果集进行重新排序:按核心期刊对结果进行排名(所谓的Bradfordizing)和按作者的中心性进行排名在共同作者网络中。将要实现的这些方法着重于查询和搜索的结果侧,并被设计为彼此产生积极影响。从概念上讲,它们将提高搜索质量,并确保结果集中最相关的文档将排名更高。本文的主要影响集中在三种结构增值方法的集成上,旨在降低信息检索过程中多个阶段分布式DL中表示的语义复杂性:查询构造,搜索以及排名和重新排名。 (作者的摘要)

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