Transferable and Forecastable User Targeting Foundation Model
Abstract
User targeting, the process of selecting targeted users from a pool of candidates for non-expert marketers, has garnered substantial attention with the advancements in digital marketing. However, existing user targeting methods encounter two significant challenges: (i) Poor cross-domain and cross-scenario transferability and generalization, and (ii) Insufficient forecastability in real-world applications. These limitations hinder their applicability across diverse industrial scenarios. In this work, we propose FOUND, an industrial-grade, transferable, and forecastable user targeting foundation model. To enhance cross-domain transferability, our framework integrates heterogeneous multi-scenario user data, aligning them with one-sentence targeting demand inputs through contrastive pre-training. For improved forecastability, the text description of each user is derived based on anticipated future behaviors, while user representations are constructed from historical information. Experimental results demonstrate that our approach significantly outperforms existing baselines in cross-domain, real-world user targeting scenarios, showcasing the superior capabilities of FOUND. Moreover, our method has been successfully deployed on the Alipay platform and is widely utilized across various scenarios.
Cite
@article{arxiv.2412.12468,
title = {Transferable and Forecastable User Targeting Foundation Model},
author = {Bin Dou and Baokun Wang and Yun Zhu and Xiaotong Lin and Yike Xu and Xiaorui Huang and Yang Chen and Yun Liu and Shaoshuai Han and Yongchao Liu and Tianyi Zhang and Yu Cheng and Weiqiang Wang and Chuntao Hong},
journal= {arXiv preprint arXiv:2412.12468},
year = {2025}
}
Comments
10 pages, 6 figures, accept by The ACM Web Conference 2025 (WWW 2025) Industry Track