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Twitter vigilance: A multi-user platform for cross-domain Twitter data analytics, NLP and sentiment analysis

机译:Twitter警惕:用于跨域Twitter数据分析,NLP和情感分析的多用户平台

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摘要

The growth and diffusion of online social media have been enormously increased in recent years, as well as the research and commercial interests toward these rising sources of information as a direct public expression of the communities. Moreover, the depth and the quality of data that can be harvested by monitoring and analysis tools have evolved significantly. In particular, Twitter has revealed to be one of the most widespread microblogging services for instantly publishing and sharing opinions, feedbacks, ratings etc., contributing in the development of the emerging role of users as sensors. However, due to the huge amount of data to be collected and analyzed and limitations on data access imposed by Twitter public APIs, more efficient requirements are needed for analytics tools, both in terms of data ingestion and processing, as well as for the computation of analysis metrics, to be provided for deeper statistic insights and further investigations. In this paper, the Twitter Vigilance platform is presented, realized by the DISIT Lab at University of Florence. Twitter Vigilance has been designed as a cross-domain, multi-user tool for collecting and analyzing Twitter data, providing aggregated metrics based on the volume of tweets and retweets, users' influence network, Natural Language Processing and Sentiment Analysis of textual content. The proposed architecture has been validated against a dataset of about 270 million tweets showing a high efficiency in recovering Twitter data. For this reason it has been adopted by a number of researchers as a study platform for social media analysis, early warning, etc.
机译:近年来,在线社交媒体的增长和传播以及针对这些不断增长的信息源(作为社区的直接公共表达)的研究和商业兴趣得到了极大的提高。此外,可以通过监视和分析工具收集的数据的深度和质量已经有了很大的发展。特别是,Twitter已显示是最广泛的微博服务之一,可立即发布和共享意见,反馈,评级等,从而促进了用户作为传感器的新兴角色的发展。但是,由于要收集和分析的数据量巨大,并且Twitter公共API施加了对数据访问的限制,因此分析工具需要更有效的要求,无论是在数据提取和处理方面,还是在计算分析指标,以提供更深入的统计见解和进一步调查。在本文中,将介绍由佛罗伦萨大学的DISIT实验室实现的Twitter Vigilance平台。 Twitter Vigilance被设计为跨域,多用户工具,用于收集和分析Twitter数据,并根据推文和转发的数量,用户的影响网络,自然语言处理和文本内容的情感分析提供汇总指标。已针对约2.7亿条推文的数据集验证了所提议的体系结构,该数据集显示了恢复Twitter数据的高效率。因此,许多研究人员已将其用作社交媒体分析,预警等的研究平台。

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