利用社交媒体:以Twitter为例

N. Rehman, Andreas Weiler, M. Scholl
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引用次数: 29

摘要

社交网络是数百万用户频繁互动并相互分享各种数字内容的平台。用户在每个感兴趣的话题上表达自己的感受和观点。这些观点对个人、学术和商业应用都具有重要价值,但这些观点产生的数量和速度使得研究人员和基础技术很难对这些数据提供有用的见解。我们试图扩展已建立的OLAP(在线分析处理)技术,通过将文本和意见挖掘方法集成到数据仓库系统中,并利用各种知识发现技术来处理来自社交媒体的半结构化和非结构化数据,从而允许对社交媒体数据进行多维分析。OLAP的功能通过对底层数据集的语义丰富得到扩展,从而发现用于构建数据立方体的新度量和维度,并支持对不断发展的和历史的社交媒体数据进行最新分析。通过为Twitter的社交网络构建数据仓库、动态地丰富底层数据集和支持多维分析,可以证明这种分析平台的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OLAPing social media: The case of Twitter
Social networks are platforms where millions of users interact frequently and share variety of digital content with each other. Users express their feelings and opinions on every topic of interest. These opinions carry import value for personal, academic and commercial applications, but the volume and the speed at which these are produced make it a challenging task for researchers and the underlying technologies to provide useful insights to such data. We attempt to extend the established OLAP(On-line Analytical Processing) technology to allow multidimensional analysis of social media data by integrating text and opinion mining methods into the data warehousing system and by exploiting various knowledge discovery techniques to deal with semi-structured and unstructured data from social media. The capabilities of OLAP are extended by semantic enrichment of the underlying dataset to discover new measures and dimensions for building data cubes and by supporting up-to-date analysis of the evolving as well as the historical social media data. The benefits of such an analysis platform are demonstrated by building a data warehouse for a social network of Twitter, dynamically enriching the underlying dataset and enabling multidimensional analysis.
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