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Maximizing Customer Lifetime Value using Stacked Neural Networks: An Insurance Industry Application

机译:使用堆叠神经网络最大化客户生命周期价值:保险行业的应用

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This paper proposes a recommender system based on two-stage neural network architecture that maximizes Customer Lifetime Value (CLV). The Stage-I neural network uses a self-attention mechanism and a Collaborative Metric Learning (CML) to generate product recommendations. The Stage-II neural network uses a neural network-based survival analysis to infer insurance product recommendations that maximize customer lifetime. The proposed stacked neural network model can be used as a generative model to explore different cross-sell scenarios. The applicability of the proposed recommendation system is evaluated using transactional data from an Australian insurance company. We validated our results against a state of the art self-attention recommendation system, successfully extending its functionality to include lifetime value.
机译:本文提出了一种基于两阶段神经网络架构的推荐系统,该系统可以最大化客户生命周期价值(CLV)。第I阶段神经网络使用自我注意机制和协作度量学习(CML)来生成产品推荐。 Stage-II神经网络使用基于神经网络的生存分析来推断保险产品建议,从而最大程度地延长客户寿命。所提出的堆叠神经网络模型可以用作生成模型,以探索不同的交叉销售场景。建议的推荐系统的适用性是使用来自澳大利亚保险公司的交易数据进行评估的。我们根据最先进的自我关注推荐系统验证了我们的结果,成功地将其功能扩展到了生命周期价值。

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