一种改进的有效客户网络未来状态预测模型

Zeng Rui, Hongli Yin, Jinyan Cai
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摘要

为了对社交网络中的客户关系进行预测分析,本文在相关数据分析和前人研究的基础上,提出了一个简单的可以生成社交网络未来状态的模型。在该模型中,考虑网络规模的限制、事件链接的方向和吸引力的时间因素,以相同的优先依附概率插入客户网络的节点和边缘,以不同的反优先依附概率删除它们。在此基础上提出了一种改进模型,利用时间序列预测计算节点的吸引力度量,并考虑了节点的关联度。由我们的模型生成的网络有一个很好的属性,即它们的度分布遵循幂律,这是社会网络的一个基本属性。这一性质是应用平均场理论推导出来的[7]。仿真结果表明,该模型能够有效地生成社会网络的未来状态,并且在使用时间序列预测计算节点吸引力度量时加入节点度因子可以改善预测结果。
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An Improved Model for Effective Customer Network Future State Prediction
For the purpose of prediction analysis of customer relationships in social networks, this paper proposes a simple model that can generate future states of a social network based on relevant data analysis and previous research. In this model, we insert nodes and edges of a customer network at the same preferential attachment probabilities, but delete them at different anti-preferential attachment probabilities with the consideration of the limit of network size, the directions of incident links and the factor of time in attractiveness. Furthermore, we propose an improved model based on the simple model that computes the attractiveness measure of nodes by applying time series prediction and takes into account of node in-degrees. Networks generated from our models have a nice property that their in-degree distribution follows the power-law, which desirably characterizes an essential property of social networks. This property is derived by applying the mean-field theory [7]. It is validated through simulation that this model can effectively generate a social network's future state and incorporating the factor of node in-degrees in computing the attractiveness measure of nodes using time series prediction can improve the prediction result.
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