纵向社会网络动态的概念量化

M. S. Uddin, Piraveenan Mahendra, Arif Khan, Babak Amiri
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引用次数: 4

摘要

纵向社会网络通过一组参与者(例如个人或组织)之间的链接的创建和/或删除而随着时间的推移而发展。网络科学和社会科学研究者对纵向社会网络进行了研究,以了解网络演化、趋势传播、友谊和信仰形成、创新扩散、越轨行为传播等。在目前的文献中,有不同的方法和方法(如Sampson方法和Markov模型)来研究纵向社会网络的动态。这些途径和方法主要用于探索纵向社会网络从一种状态到另一种状态的进化变化,并解释这些变化的潜在原因。然而,他们无法量化随时间网络变化的动态水平以及个体网络成员(即行动者)对这些变化的贡献。在这项研究中,我们首先制定了一套措施来量化纵向社会网络动态的不同方面。然后,为了进行实证调查,我们将这些措施应用于两个不同的纵向社会网络。最后,我们讨论了这些措施的应用意义以及本研究可能的未来研究方向。
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Conceptual Quantification of the Dynamicity of Longitudinal Social Networks
A longitudinal social network evolves over time through the creation and/or deletion of links among a set of actors (e.g. individuals or organisations). Longitudinal social networks are studied by network science and social science researchers to understand network evolution, trend propagation, friendship and belief formation, diffusion of innovations, the spread of deviant behaviour and more. In the current literature, there are different approaches and methods (e.g. Sampson's approach and the Markov model) to study the dynamics of longitudinal social networks. These approaches and methods have mainly been utilised to explore evolutionary changes of longitudinal social networks from one state to another and to explain the underlying reasons for these changes. However, they cannot quantify the level of dynamicity of the over time network changes and the contribution of individual network members (i.e. actors) to these changes. In this study, we first develop a set of measures to quantify different aspects of the dynamicity of a longitudinal social network. We then apply these measures, in order to conduct empirical investigations, to two different longitudinal social networks. Finally, we discuss the implications of the application of these measures and possible future research directions of this study.
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