Flexible Compression of Big Data

C. Leung, Fan Jiang, Yibin Zhang
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引用次数: 5

Abstract

High volumes of valuable data and information can be easily collected in the current era of big data. As rich and constant sources of big data, an incredible amount of people from different social stratum take part in social networks. Hence, social networks are desired for many research topics. In social networks, users (or social entities) are often linked by some ‘following’ relationships. As the social networks growing, some famous users account (or social entities) might be followed by a large number of same other users. In this situation, we call those famous users as frequently followed groups, which some researchers (or businesses) may be interested in them for investigating. However, the discovery of those frequently followed groups might be difficult and challenging because the following data in social networks are usually very big but sparse (huge number of users lead to big ‘following’ data, but each user is likely only following a small number of other users). As a result, in this paper, we present a new compression model, which can be used during mining these very big but sparse social networks for discovering the frequently followed groups of users/social entities.
灵活压缩大数据
在大数据时代,大量有价值的数据和信息可以很容易地收集到。作为丰富和持续的大数据来源,来自不同社会阶层的大量人群参与到社交网络中。因此,社会网络是许多研究课题所需要的。在社交网络中,用户(或社会实体)通常通过一些“跟随”关系联系在一起。随着社交网络的发展,一些知名用户的账户(或社交实体)可能会被大量相同的其他用户所关注。在这种情况下,我们将这些著名用户称为频繁关注组,一些研究人员(或企业)可能对他们感兴趣以进行调查。然而,发现那些经常被关注的群体可能非常困难和具有挑战性,因为社交网络中的关注数据通常非常大但稀疏(大量用户导致大量“关注”数据,但每个用户可能只关注少数其他用户)。因此,在本文中,我们提出了一种新的压缩模型,该模型可用于挖掘这些非常大但稀疏的社交网络,以发现频繁关注的用户/社交实体群体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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