不确定时间网络的结构预测

L. Beránek, R. Remes
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引用次数: 0

摘要

然后,网络分析的任务之一是使用具有最能反映建模现实真实状态的结构的网络模型来识别网络中参与者之间的关系及其动态行为。静态网络的结构预测不是一项简单的任务。这取决于数据质量。然而,对于我们在本文中讨论的网络来说,这是一个计算困难的问题。我们处理的网络是时变的(暂时的)和不确定的。本文采用信念函数理论对不确定性进行建模。基于对网络中参与者群体相互作用的估计,我们估计了模型临时网络的结构。实验结果表明,该方法可以预测不确定时间网络的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure Prediction in Uncertain Temporal Networks
One of the tasks of network analysis is then to identify the relationships between actors in a network and their dynamic behavior using a network model with a structure that reflects best the true state of the modeled reality. Structure prediction for static networks is not a simple task. It depends on data quality. However, for networks, we are discussing in this paper, it is a computationally difficult issue. We deal with networks, which are both time-varying (temporary) and uncertain. In this paper, we use belief function theory for the modelling of uncertainty. Based on an estimate of interactions of groups of actors in a network, we estimate the structure of the modeled temporary network. Experimental results show that our method can predict the structure of indefinite time networks.
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