基于邻域理论的动态社会网络建模

Pub Date : 2023-08-28 DOI:10.3233/idt-220138
Subrata Paul, C. Koner, Anirban Mitra
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引用次数: 0

摘要

动态社会网络分析基本上是研究网络内的节点和边缘以及它们之间的关联如何随时间变化,从而形成社会网络的一个特殊类别。几何分析已经在各种场合进行过,但在节点的近似距离上存在差异。在每个时间段拍摄社交网络快照,然后将其绑定到这些研究中。本文将利用元胞自动机邻域理论的概念,讨论一种有效的动态社会网络建模方法。到目前为止,就我们所知和文献调查而言,还没有人提出使用邻域概念的模型。此外,元胞自动机在各种应用中都是重要的工具,但在建模领域仍未被探索。在这种程度上,这篇论文是对自然界中不断进化的社会网络建模的第一次尝试。针对网络中新节点的出现,本文还提出了一种基于图论基本概念的链路预测算法。理论和程序模拟都对该模型进行了说明。最后,本文将以实际场景讨论该模型。
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Modeling dynamic social networks using concept of neighborhood theory
Dynamic social network analysis basically deals with the study of how the nodes and edges and associations among them within the network alter with time, thereby forming a special category of social network. Geometrical analysis has been done on various occasions, but there is a difference in the approximate distances of nodes. Snapshots for social networks are taken at each time slot and then are bound for these studies. The paper will discuss an efficient way of modeling dynamic social networks with the concept of neighborhood theory of cellular automata. So far, no model that uses the concept of neighborhood has been proposed to the best of our knowledge and the literature survey. Besides cellular automata that has been important tool in various applications has remained unexplored in the area of modelling. To this extent the paper, is the 1st attempt in modelling the social network that is evolving in nature. A link prediction algorithm based on some basic graph theory concepts has also been additionally proposed for the emergence of new nodes within the network. Theoretical and programming simulations have been explained in support to the model. Finally, the paper will discuss the model with a real-life scenario.
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