This paper aims to show how some popular topics on social networks can be used to predict online newspaper views, related to the topics. Newspapers site and many social networks, become a good source of data to analyse and explain complex phenomena. Understanding the entropy of a topic, could help all organizations that need to share information like government, institution, newspaper or company, to expect an higher activity over their channels, and in some cases predict what the receiver expect from the senders or what is wrong about the communication. For some organization such political party, leaders, company and many others, the reputation and the communication are (for most of them) the key part of a more and complex huge system. To reach our goal, we use gathering tools and information theory to detect and analyse trends topic on social networks, with the purpose of proved a method that helps organization, newspapers to predict how many articles or communication they will have to do on a topic, and how much flow of views they will have in a given period, starting with the entropy-article ratio. Our work address the issue to explore in which entropy-rate, and through which dynamics, a suitable information diffusion performance is expected on social network and then on newspaper. We have identified some cross-cutting dynamics that, associated with the contexts, might explain how people discuss about a topic, can move on to argue and informs on newspapers sites.
翻译:本文旨在说明社会网络上的一些流行话题如何能够用来预测与这些话题有关的在线报纸观点; 报纸网站和许多社交网络成为分析和解释复杂现象的一个很好的数据来源; 了解一个主题的精华,可以帮助所有需要分享信息的组织,如政府、机构、报纸或公司等,在它们的频道上期待更高的活动,并在某些情况下预测接收者对发送者有什么期望,或者对通信有什么错误; 对于某些组织来说,这种政党、领导人、公司和许多其他组织来说,声誉和通信是(对大多数组织来说)一个更复杂庞大系统的关键部分; 为了达到我们的目标,我们利用收集工具和信息理论来检测和分析社会网络的趋势主题,目的是证明一种方法,帮助组织、报纸预测他们在一个主题上必须做多少文章或通信,以及他们在一个特定时期里会有多少意见流出,从昆虫粒粒子比率开始。 我们的工作是探讨一个问题,在哪个方面,通过哪种动态,一个适当的信息传播业绩是预期在社会网络上进行,然后解释一个与报纸有关的动态的动态,我们可以解释一个主题,在社会网络上,然后我们可以解释一个交叉的报纸上如何解释。