Multi-criteria approach to viral marketing campaign planning in social networks, based on real networks, network samples and synthetic networks

Artur Karczmarczyk, Jarosław Jankowski, J. Wątróbski
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引用次数: 1

Abstract

Spreading of information within social media and techniques related to viral marketing take more and more attention from companies focused on targeting audiences within electronic systems. Recent years resulted in extensive research centered around spreading models, selection of initial nodes within networks and identification of campaign characteristics affecting the assumed goals. While social networks are usually based on complex structures and high number of users, the ability to perform detailed analysis of mechanics behind the spreading processes is very limited. The presented study shows an approach for selection of campaign parameters with the use of network samples and theoretical models. Instead of processing simulations on large network, smaller samples and theoretical networks are used. Results showed that knowledge derived from relatively smaller structures is helpful for initialization of spreading processes within the target network of larger size. Apart from agent based modeling, multi-criteria methods were used for evaluation of results from the perspective of costs and performance.
基于真实网络、网络样本和合成网络的社交网络病毒式营销活动策划多准则方法
社交媒体中的信息传播和与病毒式营销相关的技术越来越受到电子系统中目标受众的公司的关注。近年来,广泛的研究集中在传播模型,网络内初始节点的选择以及影响假设目标的活动特征的识别。虽然社交网络通常基于复杂的结构和大量用户,但对传播过程背后的机制进行详细分析的能力非常有限。本研究提出了一种利用网络样本和理论模型选择战役参数的方法。采用较小的样本和理论网络,而不是在大网络上处理模拟。结果表明,从相对较小的结构中获得的知识有助于在较大规模的目标网络中初始化扩展过程。除了基于智能体的建模外,还采用多准则方法从成本和性能的角度对结果进行评价。
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