Customer Acquisition Via Explainable Deep Reinforcement Learning

Yicheng Song, Wenbo Wang, Song Yao
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Abstract

Effective customer acquisition is crucial for digital platforms, with sequential targeting ensuring that marketing messages are both timely and relevant. The proposed deep recurrent Q-network with attention (DRQN-attention) model enhances this process by optimizing long-term rewards and increasing decision-making transparency. Tested with a data set from a digital bank, the DRQN-attention model has proven to enhance clarity in decision making and outperform traditional methods in boosting long-term rewards. Its attention mechanism acts as a strategic tool for forward planning, pinpointing crucial ad marketing channels that are likely to engage and convert prospects. This capability enables marketers to understand the dynamic targeting strategies of the proposed model that align with customer profiles, dynamic behaviors, and the seasonality of the markets, thereby boosting confidence and effectiveness in their customer acquisition strategies.
通过可解释深度强化学习获取客户
有效的客户获取对于数字平台来说至关重要,有序的目标定位确保了营销信息的及时性和相关性。所提出的具有注意力的深度循环 Q 网络(DRQN-attention)模型通过优化长期回报和提高决策透明度来加强这一过程。通过对一家数字银行的数据集进行测试,DRQN-注意力模型被证明能提高决策的清晰度,并在提高长期回报方面优于传统方法。其注意力机制可作为前瞻性规划的战略工具,精确定位可能吸引和转化潜在客户的关键广告营销渠道。这种能力使营销人员能够了解所建议模型的动态目标定位策略,这些策略与客户特征、动态行为和市场季节性相一致,从而增强了其客户获取策略的信心和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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