Robust Uplift Modeling with Large-Scale Contexts for Real-time Marketing
Zexu Sun, Qiyu Han, Minqin Zhu, Hao Gong, Dugang Liu, Chen Ma

TL;DR
This paper introduces UMLC, a novel framework for real-time marketing uplift modeling that effectively leverages large-scale contexts and feature interactions to improve prediction accuracy and reduce bias.
Contribution
The paper proposes a model-agnostic UMLC framework with context grouping and feature interaction modules to address limitations of existing uplift models in large-scale, real-time settings.
Findings
UMLC outperforms baseline models on synthetic data.
UMLC demonstrates improved uplift prediction on real-world datasets.
The framework effectively handles large-scale contexts and reduces bias.
Abstract
Improving user engagement and platform revenue is crucial for online marketing platforms. Uplift modeling is proposed to solve this problem, which applies different treatments (e.g., discounts, bonus) to satisfy corresponding users. Despite progress in this field, limitations persist. Firstly, most of them focus on scenarios where only user features exist. However, in real-world scenarios, there are rich contexts available in the online platform (e.g., short videos, news), and the uplift model needs to infer an incentive for each user on the specific item, which is called real-time marketing. Thus, only considering the user features will lead to biased prediction of the responses, which may cause the cumulative error for uplift prediction. Moreover, due to the large-scale contexts, directly concatenating the context features with the user features will cause a severe distribution shift…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Statistical Methods and Inference · Firm Innovation and Growth
MethodsFocus
