首页> 外文学位 >Big Data Challenges and Opportunities: Information Diffusion, User Behavior, and Informational Trends in Online Social Networks.
【24h】

Big Data Challenges and Opportunities: Information Diffusion, User Behavior, and Informational Trends in Online Social Networks.

机译:大数据挑战和机遇:在线社交网络中的信息传播,用户行为和信息趋势。

获取原文
获取原文并翻译 | 示例

摘要

Social networks have permeated our daily lives. We transmit ideas, innovations, news, and even diseases through them. They affect the products we buy, the languages we speak and the behaviors we exhibit. Given such implications, an accurate understanding of social networks is crucial. In addition, with most social interactions moving online, researchers have access to unprecedented amounts of detailed data about social interactions. Therefore, we are at a point in history in which both the motivation and the opportunity to study social networks is overwhelmingly strong, attracting researchers from various backgrounds to social networks research. Naturally researchers, whether they are from databases, machine learning or theory background, have a tendency to apply techniques from their fields directly to this new paradigm. However, given the interdisciplinary nature of problems in social networks, one view point is insufficient in capturing the essence of these problems. The main goal of this dissertation is to bring knowledge from various backgrounds to tackle problems relating to social networks research. In addition to relying on diverse research fields, we also leverage the power of big data. The unprecedented amounts of data on online human interactions present great opportunities for the study of social networks. As demonstrated in this thesis, big data can help build better models, algorithms and infrastructures in social networks research.;The entirety of the vast space of problems relating to social networks research is likely too complex to summarize in one thesis. Instead, we focus on problems relating to information diffusion in online social networks. The overreaching goal of this thesis is to develop useful tools for understanding, managing and reporting on information diffusion by leveraging various research areas such as data mining, statistics, data management, theory and social sciences, rather than relying on only one. While identifying influentials in social networks, we leverage data-driven methods. When modeling diffusion of information and user behavior, we rely on statistical methods and theories from social science literature. Given a solid understanding of information diffusion in social networks, we can focus on various applications. Discrete math optimization techniques provide us an optimal direction to limiting the spread of misinformation in social networks. And finally, we rely on data streams solutions for building an informational trend detection framework in social networks. Throughout our studies, we focus on various networks such as Twitter, Digg, Facebook and the Blogosphere.
机译:社交网络已经渗透到我们的日常生活中。我们通过它们传播思想,创新,新闻,甚至疾病。它们会影响我们购买的产品,我们的语言和我们表现出的行为。鉴于这样的含义,对社交网络的准确理解至关重要。此外,随着大多数社交互动在线上转移,研究人员可以访问前所未有的有关社交互动的详细数据。因此,我们正处于历史上的一个时刻,研究社交网络的动机和机会都非常强大,吸引了来自不同背景的研究人员从事社交网络研究。自然地,无论是来自数据库,机器学习还是理论背景的研究人员,都有将自己领域的技术直接应用于这种新范式的趋势。但是,鉴于社会网络中问题的跨学科性质,一种观点不足以捕捉这些问题的实质。本文的主要目的是从各种背景中获取知识,以解决与社会网络研究有关的问题。除了依赖不同的研究领域,我们还利用大数据的力量。在线人际互动的前所未有的数据量为社交网络的研究提供了巨大的机会。正如本文所论证的那样,大数据可以帮助在社交网络研究中建立更好的模型,算法和基础结构。与社交网络研究有关的问题的巨大空间的整体可能太复杂而无法在一个论文中进行总结。相反,我们专注于与在线社交网络中的信息传播有关的问题。本文的首要目标是通过利用数据挖掘,统计,数据管理,理论和社会科学等各个研究领域,而不是仅依靠一个领域,来开发有用的工具来理解,管理和报告信息传播。在确定社交网络中的影响力时,我们利用数据驱动的方法。在对信息和用户行为的扩散进行建模时,我们依赖于社会科学文献中的统计方法和理论。有了对社交网络中信息传播的深入了解,我们可以专注于各种应用程序。离散数学优化技术为我们提供了一种限制社交网络中错误信息传播的最佳方向。最后,我们依靠数据流解决方案在社交网络中构建信息趋势检测框架。在整个研究过程中,我们专注于Twitter,Digg,Facebook和Blogosphere等各种网络。

著录项

  • 作者

    Budak, Ceren.;

  • 作者单位

    University of California, Santa Barbara.;

  • 授予单位 University of California, Santa Barbara.;
  • 学科 Web Studies.;Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 257 p.
  • 总页数 257
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号