Visualization of Influential Blog Networks Using BlogTracker

Abiola Akinnubi, Nitin Agarwal, Ayokunle Sunmola, Vanessa Okeke
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Abstract

The advent of web 2.0 and social media blogging has enabled researchers to have access to troves of blog data in the 21st century. While platforms and big corporations like Twitter and Facebook can apply the concept of user networks by leveraging internal tools developed by their teams. Researchers and analysts have had to make use of repetitive ways of analyzing blog networks for collected data. This is due to the limited live databases to store and keep track of blog data and the lack of centralized publicly available tools with such capability. When analyzing blog data, the analyst often wants the capability to model relationships and see blogs that share ideological similarities. This is so because blogs always reference each other when they share similarities in content or when they attempt to reinforce a point of view discussed on the medium. Since the blogosphere is made up of a virtual network of blogs - the blogosphere is defined as the network of blogs and has no limitation in blogs referencing one another. It becomes imperative to have a solution that can allow an analyst to visualize the relationships between blogs based on how influential these blogs are when the analyst tracks the discus on the blogs. We address this by providing users with the capability to visualize and analyze blogs that are influential and how connected these blogs are by a way of network visualization. This demonstration shows how the BlogTracker application analyze and visualizes the blog network.
使用BlogTracker可视化有影响力的博客网络
web 2.0和社交媒体博客的出现使研究人员能够在21世纪访问博客数据的宝库。而像Twitter和Facebook这样的平台和大公司可以通过利用其团队开发的内部工具来应用用户网络的概念。研究人员和分析人员不得不使用重复的方法来分析博客网络以收集数据。这是由于存储和跟踪博客数据的实时数据库有限,以及缺乏具有此类功能的集中式公共可用工具。在分析博客数据时,分析人员通常希望能够对关系进行建模,并查看具有意识形态相似性的博客。这是因为当博客在内容上有相似之处时,或者当他们试图加强在媒体上讨论的观点时,博客总是相互引用。由于博客圈是由虚拟的博客网络组成的,因此博客圈被定义为博客网络,并且博客之间的相互引用没有限制。当分析人员跟踪博客上的讨论时,必须有一个解决方案,允许分析人员根据这些博客的影响力来可视化这些博客之间的关系。我们通过为用户提供可视化和分析有影响力的博客以及这些博客如何通过网络可视化的方式连接的能力来解决这个问题。这个演示展示了BlogTracker应用程序如何分析和可视化博客网络。
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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