关联数据融合和质量评估框架

M. K. Nahari, Nasser Ghadiri, Zahra Jafarifard, A. B. Dastjerdi, J. Sack
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引用次数: 6

摘要

语义网技术的发展为关联数据及其应用的不断发展提供了基础。近年来,链接数据源的数量从12个增加到2973多个。数据集作为分散的来源进行管理,它们的质量是一个严重的问题。对关联数据的质量进行评估是在不同领域采用关联数据的关键,因为每个数据集都是由不同的小组使用不同的方法和工具开发的。此外,众包是数据收集的主要策略之一。这种贡献在旅游行业或电子商务领域都可以看到,值得关注。这些数据在质量和数量上的多样性高于官方组织和公司产生的数据。在本文中,我们首先概述和评估数据质量评估的维度和措施。然后,我们提出了一个新的框架作为改进关联数据质量评估和数据融合的解决方案。最后,我们采用了几个工具来评估一些信誉良好的数据源的数据质量。
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A framework for linked data fusion and quality assessment
The growth of semantic web technologies underpins the ever-increasing development of linked data and their applications. In recent years, the number of linked data sources has been raised from 12 to more than 2973 sets. The datasets are managed as decentralized sources, and their quality is a serious concern. The assessment of the quality of linked data is a key to adopting them in different fields because each data set has been developed by a different group, using various methods and tools. Moreover, crowd sourcing contributes as one of the main strategies in data collection. This contribution is seen in the tourism industry or E-commerce fields and deserves attention. The qualitative and quantitative diversity of such data is higher than those generated by official organizations and firms. In this paper, we first overview and evaluate the dimensions and measures for the quality assessment of data. Then, we present a novel framework as a solution for improving linked data quality evaluation and data fusion. Finally, we adopt several tools to assess the quality of data of some reputable data sources using the proposed framework.
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