基于主题的图形注意网络的社会关系客户价值预测

J. Piao, Guozheng Zhang, Fengli Xu, Zhilong Chen, Yong Li
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引用次数: 18

摘要

客户价值对于成功的客户关系管理至关重要。尽管越来越多的证据表明,顾客的购买决策可以受到社会关系的影响,但在以前的研究中,社会影响在很大程度上被忽视了。在这项工作中,我们用一个新颖的框架填补了这一空白——基于主题的多视图图注意力网络与门控制融合(MAG),它联合考虑了客户人口统计、过去的行为和社会网络结构。具体而言,(1)为了最大限度地利用复杂社会网络中的高阶信息,我们设计了一个基于主题的多视图图注意模块,该模块明确捕获了不同的高阶结构,并对信息丰富的结构自动分配高权重。(2)为了模拟顾客属性和社会影响的复杂效应,我们提出了一个门控融合模块,其中一个门描述了对社会影响的敏感性,另一个门描述了这两个因素的依赖性。在两个大规模数据集上进行的大量实验表明,我们的模型在最先进的基线上具有优越的性能。此外,我们发现基序的增加并不能保证更好的性能,并确定了基序如何发挥不同的作用。这些发现揭示了如何理解客户之间的社会经济关系,并找到高价值客户。
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Predicting Customer Value with Social Relationships via Motif-based Graph Attention Networks
Customer value is essential for successful customer relationship management. Although growing evidence suggests that customers’ purchase decisions can be influenced by social relationships, social influence is largely overlooked in previous research. In this work, we fill this gap with a novel framework — Motif-based Multi-view Graph Attention Networks with Gated Fusion (MAG), which jointly considers customer demographics, past behaviors, and social network structures. Specifically, (1) to make the best use of higher-order information in complex social networks, we design a motif-based multi-view graph attention module, which explicitly captures different higher-order structures, along with the attention mechanism auto-assigning high weights to informative ones. (2) To model the complex effects of customer attributes and social influence, we propose a gated fusion module with two gates: one depicts the susceptibility to social influence and the other depicts the dependency of the two factors. Extensive experiments on two large-scale datasets show superior performance of our model over the state-of-the-art baselines. Further, we discover that the increase of motifs does not guarantee better performances and identify how motifs play different roles. These findings shed light on how to understand socio-economic relationships among customers and find high-value customers.
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