推文的OLAP:从建模到利用

Maha Ben Kraiem, J. Feki, Kaïs Khrouf, F. Ravat, O. Teste
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引用次数: 13

摘要

随着社交网络的迅猛发展,这些社交网站上每分钟产生的新数据量也在不断增长。Twitter为数百万用户提供了丰富的信息。Twitter消息,或tweets,限制为140个数据字符。这种长度上的限制使它们的分析变得困难。然而,各种可访问的元数据与每条消息相关联。考虑到这些元数据,它们对分析和决策非常有用。在大量tweet上应用OLAP(在线分析处理)和数据挖掘技术是一个挑战,它将允许提取信息和知识,如用户行为、新出现的问题和趋势。本文提出了一个专用于推文OLAP的通用多维模型,并对从推文中提取的各种数据对该多维模型进行了测试,给出了一些结果和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OLAP of the tweets: From modeling toward exploitation
With the tremendous growth of social networks, there has been a growth in the amount of new data created every minute on these networking sites. Twitter acts as a great source of rich information for millions of users. Twitter messages, or tweets, are limited to 140 data characters. This limitation in length makes difficult their analysis. However, various accessible meta-data are associated with every message. Taking into account these meta-data, they can be very useful for analysis and making decisions. Applying OLAP (On-Line Analytical Processing) and data mining technologies on large volumes of tweets is a challenge that would allow the extraction of information and knowledge such as user behavior, new emerging issues, trends. This paper proposes a generic multidimensional model dedicated to the OLAP of tweets with some results and analyses for testing this multi-dimensional model on various data extracted from tweets.
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