LGIRJun 1, 2023

Explicit Feature Interaction-aware Uplift Network for Online Marketing

arXiv:2306.00315v134 citationsh-index: 46
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately estimating individual treatment effects for targeted marketing, particularly in scenarios with multiple correlated treatments and rich user features, representing an incremental advancement over existing methods.

The paper tackles the problem of uplift modeling in online marketing by proposing an explicit feature interaction-aware uplift network (EFIN) to better exploit treatment information and mine treatment-sensitive features, resulting in significant improvements in deployment on a large online financial platform.

As a key component in online marketing, uplift modeling aims to accurately capture the degree to which different treatments motivate different users, such as coupons or discounts, also known as the estimation of individual treatment effect (ITE). In an actual business scenario, the options for treatment may be numerous and complex, and there may be correlations between different treatments. In addition, each marketing instance may also have rich user and contextual features. However, existing methods still fall short in both fully exploiting treatment information and mining features that are sensitive to a particular treatment. In this paper, we propose an explicit feature interaction-aware uplift network (EFIN) to address these two problems. Our EFIN includes four customized modules: 1) a feature encoding module encodes not only the user and contextual features, but also the treatment features; 2) a self-interaction module aims to accurately model the user's natural response with all but the treatment features; 3) a treatment-aware interaction module accurately models the degree to which a particular treatment motivates a user through interactions between the treatment features and other features, i.e., ITE; and 4) an intervention constraint module is used to balance the ITE distribution of users between the control and treatment groups so that the model would still achieve a accurate uplift ranking on data collected from a non-random intervention marketing scenario. We conduct extensive experiments on two public datasets and one product dataset to verify the effectiveness of our EFIN. In addition, our EFIN has been deployed in a credit card bill payment scenario of a large online financial platform with a significant improvement.

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