Next-User Retrieval: Enhancing Cold-Start Recommendations via Generative Next-User Modeling
Yu-Ting Lan, Yang Huo, Yi Shen, Xiao Yang, Zuotao Liu

TL;DR
This paper introduces Next-User Retrieval, a generative framework using transformer models to improve cold-start recommendations by predicting potential users based on recent user interaction sequences, enhancing item exposure and engagement.
Contribution
It proposes a novel transformer-based next-user modeling approach that effectively incorporates interaction sequences and item features for better cold-start recommendations.
Findings
Achieved 0.0142% increase in daily active users.
Realized +0.1144% growth in publications on Douyin.
Demonstrated effectiveness through offline and online experiments.
Abstract
The item cold-start problem is critical for online recommendation systems, as the success of this phase determines whether high-quality new items can transition to popular ones, receive essential feedback to inspire creators, and thus lead to the long-term retention of creators. However, modern recommendation systems still struggle to address item cold-start challenges due to the heavy reliance on item and historical interactions, which are non-trivial for cold-start items lacking sufficient exposure and feedback. Lookalike algorithms provide a promising solution by extending feedback for new items based on lookalike users. Traditional lookalike algorithms face such limitations: (1) failing to effectively model the lookalike users and further improve recommendations with the existing rule- or model-based methods; and (2) struggling to utilize the interaction signals and incorporate…
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Taxonomy
TopicsRecommender Systems and Techniques · Information Retrieval and Search Behavior · Topic Modeling
