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Analyzing Embedded Semantic with JSON-LD and Microdata for Educational Resources in Large Scale Web Datasets

机译:大规模Web数据集中使用JSON-LD和微数据分析嵌入式语义以获取教育资源

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The use of embedded markup for semantic web annotations has been fostered in the last years to produce structured information and improve visualization of search results. Its use enables major search engines to interpret and exhibit describing data from web content. This paper presents a quantitative analysis of the deployment of widely use markup formats, JSON-LD and Microdata, conducted on datasets from a large web crawling corpus of 2018. It is focusing on the use of Schema vocabulary applied to describe educational resources. The results show that Microdata largely predominates over JSON-LD encoding. This finding was not expected because Microdata is not a W3C recommendation, while, JSON-LD is such since 2014. Further, the analysis reveals a low use of Schema specific properties to describe educational resources, which could indicate a lack of interest in using markup technology in this field.
机译:近年来,已经在语义Web注释中使用嵌入式标记,以产生结构化信息并改善搜索结果的可视化。它的使用使主要搜索引擎可以解释和展示来自Web内容的描述数据。本文对从2018年大型Web爬取语料库的数据集中进行的广泛使用的标记格式JSON-LD和微数据的部署进行了定量分析。它着重于使用模式词汇来描述教育资源。结果表明,微数据在很大程度上胜过JSON-LD编码。由于Microdata不是W3C的推荐,因此未预期到此发现,而JSON-LD自2014年以来就是这种情况。此外,该分析表明,使用Schema特定属性来描述教育资源的使用率较低,这可能表明对使用标记缺乏兴趣该领域的技术。

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