Trinity: A Scenario-Aware Recommendation Framework for Large-Scale Cold-Start Users

arXiv:2603.00502v1 Announce Type: new Abstract: Early-stage users in a new scenario intensify cold-start challenges, yet prior works often address only parts of the problem through model architecture. Launching a new user experience to replace an established product involves sparse behavioral sig...

Trinity: A Scenario-Aware Recommendation Framework for Large-Scale Cold-Start Users
arXiv:2603.00502v1 Announce Type: new Abstract: Early-stage users in a new scenario intensify cold-start challenges, yet prior works often address only parts of the problem through model architecture. Launching a new user experience to replace an established product involves sparse behavioral signals, low-engagement cohorts, and unstable model performance. We argue that effective recommendations require the synergistic integration of feature engineering, model architecture, and stable model updating. We propose Trinity, a framework embodying this principle. Trinity extracts valuable information from existing scenarios while ensuring predictive effectiveness and accuracy in the new scenario. In this paper, we showcase Trinity applied to a billion-user Microsoft product transition. Both offline and online experiments demonstrate that our framework achieves substantial improvements in addressing the combined challenge of new users in new scenarios.
本文基于 arXiv cs.LG 的报道进行深度分析与改写。 阅读原文 →