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Network Theoretic Approaches for Understanding and Analyzing Social Media Based News Article Propagation

机译:用于理解和分析基于社交媒体的新闻报道传播的网络理论方法

摘要

Characteristically, propagation of news on the Internet is a rather complex scenario. Its comprehensive understanding requires a consideration of diverse facets such as audience, problem domain, channel and type of news being propagated. My dissertation focuses on the understanding of propagation of a specific type of news- news articles, on a particular subset of the Internet, the social media. While a number of studies have looked into the phenomenon of propagation in social media, fewer of these have examined the propagation of content, specifically news articles, published by news provider websites. My dissertation presents a set of network theory based methodologies to extract and analyze various implicit propagation networks formed as a result of news article sharing on Twitter. These methodologies cover aspects related to users' article sharing behavior, influence of the news provider's social media accounts, role of followers and similarities between propagation networks of news providers. Furthermore, it also includes useful inferences derived about the news article propagation phenomenon by using a population sized data sampled from Twitter over a nine-month period. It expands on the inferences from my published works and the challenges identified in the area of news article consumption and distribution on the Internet. My dissertation intends to provide important guidelines for researchers and organizations studying social media related phenomena to derive insights about customer behavior. From the perspective of online news consumption and distribution, my study has important implications for the audience's preference of news content delivery. It also facilitates news providers to gauge their performance on social media and for news editors to help develop editorial policies tailored for an online consumer base. Finally, my dissertation presents an extensive set of network based models and methodologies that can enrich the applied network science discipline.
机译:从特征上讲,新闻在Internet上的传播是一个相当复杂的场景。它的全面理解需要考虑各个方面,例如受众,问题域,传播渠道和新闻类型。我的论文集中于对特定类型的新闻新闻文章在互联网的特定子集(社交媒体)上的传播的理解。尽管有许多研究调查了社交媒体中的传播现象,但很少有研究内容是由新闻提供者网站发布的,尤其是新闻文章的传播。我的论文提出了一套基于网络理论的方法,用于提取和分析由于Twitter上的新闻共享而形成的各种隐式传播网络。这些方法论涵盖了与用户文章共享行为,新闻提供者的社交媒体帐户的影响,关注者的角色以及新闻提供者的传播网络之间的相似性有关的方面。此外,它还包括使用从Twitter收集的九个月期间的人口规模数据得出的有关新闻报道传播现象的有用推论。它扩展了我发表的作品的推论,以及在互联网上新闻消费和发行领域所发现的挑战。本文旨在为研究社交媒体相关现象的研究人员和组织提供重要指导,以期获得有关客户行为的见解。从在线新闻的消费和分发的角度来看,我的研究对受众对新闻内容交付的偏好具有重要意义。它还可以帮助新闻提供者评估其在社交媒体上的表现,并帮助新闻编辑者制定针对在线消费者基础的编辑政策。最后,我的论文提出了一套广泛的基于网络的模型和方法,可以丰富应用网络科学学科。

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    Bhattacharya Devipsita;

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  • 年度 2016
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