利用大数据和社会网络对知识库中同侪生成内容的质量评估:维基百科中隐性协作的案例

IF 2.8 4区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE Data Base for Advances in Information Systems Pub Date : 2019-11-01 DOI:10.1145/3371041.3371045
Srikar Velichety
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引用次数: 4

摘要

本研究提供了一种利用协作的互补观点对知识库中同行产生的内容进行质量评估的方法。将协作定义为与某人合作生产某物的行为,我们确定了当前在线社区研究未考虑的协作方面。为此,我们引入并定义了隐性协作的概念,然后确定了两个维度和四个可能的协作领域。在每个领域中,我们都确定了能够捕获协作的相关社交网络。在每个捕获协作的各个方面的网络上使用定制的度量,我们量化了隐性协作在评估文章质量中的效用。在维基百科英语分级文章的完整群体上进行的实验表明,所有识别的度量都将现有模型的预测精度提高了11.89%,同时将分类精度提高了9- 18%,分类召回率提高了5- 26%。我们还发现我们的方法很好地补充了现有的质量评估方法。我们的研究对利用大数据和社交网络开发同行生产内容的自动质量评估方法具有启示意义。
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Quality Assessment of Peer-Produced Content in Knowledge Repositories Using Big Data and Social Networks: The Case of Implicit Collaboration in Wikipedia
This research provides a method for quality assessment of peer-produced content in knowledge repositories using a complementary view of collaboration. Using the definition of collaboration as the action of working with someone to produce something, we identify the aspects of collaboration that the present research on online communities does not consider. To this end, we introduce and define the concept of implicit collaboration and then identify two dimensions and four possible areas of collaboration. In each area, we identify the relevant social network that captures collaboration. Using customized measures on each of the networks that capture various aspects of collaboration, we quantify the utility of implicit collaboration in assessing article quality. Experiments conducted on the complete population of graded English language Wikipedia articles show that all the identified measures improve the predictive accuracy of the existing models by 11.89 percent while improving the class-wise precision by 9-18 percent and the class-wise recall by 5-26 percent. We also find that our method complements the existing quality assessment approaches well. Our research has implications for developing automated quality assessment methods for peer-produced content using big data and social networks.
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来源期刊
Data Base for Advances in Information Systems
Data Base for Advances in Information Systems INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.60
自引率
7.10%
发文量
18
期刊最新文献
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