LGMay 24, 2024

Rankability-enhanced Revenue Uplift Modeling Framework for Online Marketing

arXiv:2405.15301v223 citationsh-index: 8KDD
Originality Incremental advance
AI Analysis

This work improves revenue uplift modeling for online marketing platforms, offering incremental enhancements to handle specific bottlenecks in ranking and distribution.

The paper tackles the challenge of revenue uplift modeling in online marketing by addressing continuous long-tail response distributions and optimizing uplift ranking, achieving validated effectiveness on offline datasets and demonstrating superiority in real-world applications on Tencent FiT.

Uplift modeling has been widely employed in online marketing by predicting the response difference between the treatment and control groups, so as to identify the sensitive individuals toward interventions like coupons or discounts. Compared with traditional \textit{conversion uplift modeling}, \textit{revenue uplift modeling} exhibits higher potential due to its direct connection with the corporate income. However, previous works can hardly handle the continuous long-tail response distribution in revenue uplift modeling. Moreover, they have neglected to optimize the uplift ranking among different individuals, which is actually the core of uplift modeling. To address such issues, in this paper, we first utilize the zero-inflated lognormal (ZILN) loss to regress the responses and customize the corresponding modeling network, which can be adapted to different existing uplift models. Then, we study the ranking-related uplift modeling error from the theoretical perspective and propose two tighter error bounds as the additional loss terms to the conventional response regression loss. Finally, we directly model the uplift ranking error for the entire population with a listwise uplift ranking loss. The experiment results on offline public and industrial datasets validate the effectiveness of our method for revenue uplift modeling. Furthermore, we conduct large-scale experiments on a prominent online fintech marketing platform, Tencent FiT, which further demonstrates the superiority of our method in real-world applications.

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