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首页> 外文期刊>International journal of computer-supported collaborative learning >Explaining authors' contribution to pivotal artifacts during mass collaboration in the Wikipedia's knowledge base
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Explaining authors' contribution to pivotal artifacts during mass collaboration in the Wikipedia's knowledge base

机译:在Wikipedia知识库中的大规模协作期间解释作者对关键工件的贡献

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摘要

This article discusses the relevance of large-scale mass collaboration for computer-supported collaborative learning (CSCL) research, adhering to a theoretical perspective that views collective knowledge both as substance and as participatory activity. In an empirical study using the German Wikipedia as a data source, we explored collective knowledge as manifested in the structure of artifacts that were created through the collaborative activity of authors with different levels of contribution experience. Wikipedia's interconnected articles were considered at the macro level as a network and analyzed using a network analysis approach. The focus of this investigation was the relation between the authors' experience and their contribution to two types of articles: central pivotal articles within the artifact network of a single knowledge domain and boundary-crossing pivotal articles within the artifact network of two adjacent knowledge domains. Both types of pivotal articles were identified by measuring the network position of artifacts based on network analysis indices of topological centrality. The results showed that authors with specialized contribution experience in one domain predominantly contributed to central pivotal articles within that domain. Authors with generalized contribution experience in two domains predominantly contributed to boundary-crossing pivotal articles between the knowledge domains. Moreover, article experience (i.e., the number of articles in both domains an author had contributed to) was positively related to the contribution to both types of pivotal articles, regardless of whether an author had specialized or generalized domain experience. We discuss the implications of our findings for future studies in the field of CSCL.
机译:本文讨论了大规模大规模协作与计算机支持的协作学习(CSCL)研究的相关性,并坚持将集体知识既视为实质活动又作为参与活动的理论观点。在一项以德国维基百科为数据源的实证研究中,我们探索了由具有不同贡献经验水平的作者的协作活动创建的人工制品结构中体现的集体知识。 Wikipedia的相互关联的文章在宏观一级被视为网络,并使用网络分析方法进行了分析。这项研究的重点是作者的经验及其对两种文章的贡献之间的关系:单个知识域的工件网络内的中心关键文章和两个相邻知识域的工件网络内的跨界关键文章。通过基于拓扑中心性的网络分析指标测量工件的网络位置,可以识别这两种类型的关键文章。结果表明,在某一领域具有专门贡献经验的作者主要对该领域内的核心关键文章做出了贡献。在两个领域具有广泛贡献经验的作者主要对知识领域之间的跨界关键文章做出了贡献。此外,文章经验(即作者在这两个领域贡献的文章数量)与对这两种关键文章的贡献呈正相关,无论作者是否具有专门的或广义的领域经验。我们讨论了我们的发现对CSCL领域未来研究的意义。

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