LGAIMEApr 29, 2025

The Estimation of Continual Causal Effect for Dataset Shifting Streams

arXiv:2504.20471v1
Originality Incremental advance
AI Analysis

This addresses the challenge of adapting causal models to changing user behavior over time for marketing applications, representing an incremental improvement to existing frameworks.

The paper tackles the problem of temporal dataset shift in causal effect estimation for marketing optimization by proposing the ICE-PKD framework, which achieves better performance in experiments on simulated and online datasets and has been deployed on a ride-hailing platform.

Causal effect estimation has been widely used in marketing optimization. The framework of an uplift model followed by a constrained optimization algorithm is popular in practice. To enhance performance in the online environment, the framework needs to be improved to address the complexities caused by temporal dataset shift. This paper focuses on capturing the dataset shift from user behavior and domain distribution changing over time. We propose an Incremental Causal Effect with Proxy Knowledge Distillation (ICE-PKD) framework to tackle this challenge. The ICE-PKD framework includes two components: (i) a multi-treatment uplift network that eliminates confounding bias using counterfactual regression; (ii) an incremental training strategy that adapts to the temporal dataset shift by updating with the latest data and protects generalization via replay-based knowledge distillation. We also revisit the uplift modeling metrics and introduce a novel metric for more precise online evaluation in multiple treatment scenarios. Extensive experiments on both simulated and online datasets show that the proposed framework achieves better performance. The ICE-PKD framework has been deployed in the marketing system of Huaxiaozhu, a ride-hailing platform in China.

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