Perceive Your Users in Depth: Learning Universal User Representations from Multiple E-commerce Tasks
Yabo Ni, Dan Ou, Shichen Liu, Xiang Li, Wenwu Ou, Anxiang Zeng, Luo Si

TL;DR
This paper introduces DUPN, a deep learning framework that learns universal user representations across multiple e-commerce tasks, improving personalization and transferability in large-scale online platforms.
Contribution
The work proposes a novel end-to-end model that integrates user behavior data across tasks to learn shared representations, enhancing personalization effectiveness.
Findings
DUPN outperforms task-specific models on five different tasks.
Universal user representations improve transferability to new tasks.
Deployment in Taobao demonstrates practical benefits.
Abstract
Tasks such as search and recommendation have become increas- ingly important for E-commerce to deal with the information over- load problem. To meet the diverse needs of di erent users, person- alization plays an important role. In many large portals such as Taobao and Amazon, there are a bunch of di erent types of search and recommendation tasks operating simultaneously for person- alization. However, most of current techniques address each task separately. This is suboptimal as no information about users shared across di erent tasks. In this work, we propose to learn universal user representations across multiple tasks for more e ective personalization. In partic- ular, user behavior sequences (e.g., click, bookmark or purchase of products) are modeled by LSTM and attention mechanism by integrating all the corresponding content, behavior and temporal information. User representations…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Expert finding and Q&A systems
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
