Colledge: a vision of collaborative knowledge networks

S. Metzger, K. Hose, Ralf Schenkel
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引用次数: 4

Abstract

More and more semantic information has become available as RDF data recently, with the linked open data cloud as a prominent example. However, participating in the Semantic Web is cumbersome. Typically several steps are involved in using semantic knowledge. Information is first acquired, e.g. by information extraction, crowd sourcing or human experts. Then ontologies are published and distributed. Users may apply reasoning and otherwise modify their local ontology instances. However, currently these steps are treated separately and although each involves human effort, nearly no synergy effect is used and it is also mostly a one way process, e.g. user feedback hardly flows back into the main ontology version. Similarly, user cooperation is low. While there are approaches alleviating some of these limitations, e.g. extracting information at query time, personalizing queries, and integration of user feedback, this work combines all the pieces envisioning a social knowledge network that enables collaborative knowledge generation and exchange. Each aforementioned step is seen as a particular implementation of a network node responding to knowledge queries in its own way, e.g. by extracting it, applying reasoning or asking users, and learning from knowledge exchanged with neighbours. Original knowledge as well as user feedback is distributed over the network based on similar trust and provenance mechanisms. The extended query language we call for also allows for personalization.
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大学:合作知识网络的愿景
最近,越来越多的语义信息以RDF数据的形式出现,链接开放数据云就是一个突出的例子。然而,参与语义网是很麻烦的。使用语义知识通常涉及几个步骤。信息首先获得,例如通过信息提取、群体外包或人类专家。然后发布和分发本体。用户可以应用推理或修改本地本体实例。然而,目前这些步骤是分开处理的,尽管每个步骤都涉及到人力,但几乎没有使用协同效应,而且它也主要是一个单向过程,例如用户反馈几乎不会回流到主要的本体版本。同样,用户合作也很低。虽然有一些方法可以减轻这些限制,例如在查询时提取信息,个性化查询和用户反馈的集成,但这项工作结合了所有部分,设想了一个社会知识网络,使协作知识生成和交换成为可能。前面提到的每一步都被看作是网络节点以自己的方式响应知识查询的特定实现,例如通过提取知识,应用推理或询问用户,以及从与邻居交换的知识中学习。原始知识和用户反馈基于类似的信任和来源机制分布在网络上。我们所要求的扩展查询语言也允许个性化。
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