Adding meaning to facebook microposts via a mash-up API and tracking its data provenance

T. Steiner, R. Verborgh, Joaquim Gabarró Vallés, R. Walle
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引用次数: 9

Abstract

The social networking website Facebook offers to its users a feature called “status updates” (or just “status”), which allows users to create microposts directed to all their contacts, or a subset thereof. Readers can respond to microposts, or in addition to that also click a “Like” button to show their appreciation for a certain micropost. Adding semantic meaning in the sense of unambiguous intended ideas to such microposts can, for example, be achieved via Natural Language Processing (NLP). Therefore, we have implemented a RESTful mash-up NLP API, which is based on a combination of several third party NLP APIs in order to retrieve more accurate results in the sense of emergence. In consequence, our API uses third party APIs opaquely in the background in order to deliver its output. In this paper, we describe how one can keep track of provenance, and credit back the contributions of each single API to the combined result of all APIs. In addition to that, we show how the existence of provenance metadata can help understand the way a combined result is formed, and optimize the result combination process. Therefore, we use the HTTP Vocabulary in RDF and the Provenance Vocabulary. The main contribution of our work is a description of how provenance metadata can be automatically added to the output of mash-up APIs like the one presented here.
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通过混搭API为facebook微博添加意义,并跟踪其数据来源
社交网站Facebook为其用户提供了一项名为“状态更新”(或简称“状态”)的功能,该功能允许用户创建指向所有联系人或其子集的微博。读者可以回复微博,也可以点击“喜欢”按钮来表达对某条微博的欣赏。例如,可以通过自然语言处理(NLP)向此类微博添加语义意义,即明确的意图思想。因此,我们实现了一个RESTful mashup NLP API,它基于几个第三方NLP API的组合,以便在出现感上检索更准确的结果。因此,我们的API在后台不透明地使用第三方API来交付输出。在本文中,我们描述了如何跟踪来源,并将每个API的贡献归功于所有API的组合结果。除此之外,我们还展示了来源元数据的存在如何帮助理解组合结果的形成方式,并优化结果组合过程。因此,我们使用RDF中的HTTP词汇表和出处词汇表。我们工作的主要贡献是描述了如何将来源元数据自动添加到mashup api的输出中,就像这里展示的那样。
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