微博信息流微观结构的分析探讨

Monaheng Ramokhoro, Pheello Maboea, Tresia Holtzhausen, Phumlani N Khoza
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引用次数: 0

摘要

本文回顾了网络社会概念框架中提出的概念,包括历史和现在的考虑,并将它们扩展到创建Twitter信息流微观结构的分析探针。通过考虑社会互联性对个人的影响,网络社会的哲学基础是建立在超越制度整合的网络互联性之上的。虽然表现形式逐渐变得明显,但文献仍然在很大程度上缺乏实证结果,以促进进一步的理论发展。特别地;我们提出的论点支持这样一种观点,即社会正变得高度相互联系,这些发展值得研究。作为一项技术贡献,我们提出了从机器学习和网络科学的联合应用制定的分析工具的基础。从技术上讲,我们构建了一个多层网络,由用户交互模式、表征话语的主题和话语中引用的实体组成。然后,多层网络形成了可以进行分析的数学对象,并使我们能够研究信息流的微观结构。随着时间的变化而产生的多层网络集作为表征Twitter信息流微观结构的技术基础。作为一个总体主题,我们认为发展对此类信息流的理解对商业实体、政府和普通民众都具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an Analytical Probe for Twitter Information Flow Micro-structure
This article reviews the concepts presented with the conceptual framework of the network society, both in historical and present considerations, and extends them towards creating an analytical probe for information flow micro-structure on Twitter. By considering the effects of societal interconnectedness as it relates to individuals, the philosophical foundations of the network society are predicated on network interconnectedness that goes beyond institutional integration. Although the manifestations are progressively becoming apparent, the literature is still largely lacking in empirical results to facilitate further theoretical developments. Specifically; we present arguments that support the notion that society is becoming highly interconnected, and that these developments warrant study. As a technical contribution, we present the foundations for an analytical tool that is formulated from the joint application of machine learning and network science. Technically, we construct a multilayer network composed of: user interaction patterns, topics that characterize the discourse, and the entities that are referenced in the discourse. The multilayer network then forms the mathematical object on which analysis can be conducted, and allows us to study information flow micro-structure. The set of multilayer networks, that is generated by varying time, serves as a technical underpinning on which to characterize information flow micro-structure on Twitter. As an overarching theme, we argue that developing an understanding of such information flows is of significance to: commercial entities, governments, and the general populace.
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