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Tweets classification, hashtags suggestion and tweets linking in social semantic web

机译:社会语义网中的推文分类,主题标签建议和推文链接

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Nowadays social semantic Web has become one of the most important sources of data. The quality of data is crucial for data integration and annotation in social Linked Open Data (LOD). The main goal of tweets classification and linking is to integrate all tweets that are related semantically in one place on the Web. The data inequality problems exist because authors post tweets and hashtag them based on their own preference. The authors can post tweets in different languages (English-Arabic). Therefore, the hashtags cannot be the only trackback function of the tweet to link it with the related tweets. Thus, the goal of this paper is to develop an automated tweet classifier which is not limited by the language or the category of the tweet. The approach can create new suggested multilingual (English, Arabic) hashtags from tweet's content and comments "auto-tagging" in social linked open data (LOD), matching the tweets in the same topic and provides high accuracy and performance using blocking and indexing techniques. The proposed framework has substantial improvements in tweets classification and linking compared to state of the art framework of classifying and linking techniques with better classifying rate which reach 95% in precision and 97% in recall.
机译:如今,社会语义网已经成为最重要的数据来源之一。数据质量对于社交链接开放数据(LOD)中的数据集成和注释至关重要。推文分类和链接的主要目标是将语义上相关的所有推文集成到Web的一个位置。之所以存在数据不平等问题,是因为作者根据自己的喜好发布了推文并对其进行了标签标记。作者可以用不同的语言(英语-阿拉伯语)发布推文。因此,主题标签不能成为推文与相关推文链接的唯一引用功能。因此,本文的目的是开发一种自动的推文分类器,其不受推文的语言或类别的限制。该方法可以根据推文的内容和社交链接的开放数据(LOD)中的“自动标记”注释创建新的建议的多语言(英语,阿拉伯语)主题标签,匹配同一主题中的推文,并使用阻止和索引技术提供高精度和高性能。 。与最新的分类和链接技术框架相比,该框架在推文分类和链接方面有了实质性的改进,分类和链接技术的分类率更高,准确率达到95%,召回率达到97%。

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