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Perceive Your Users in Depth: Learning Universal User Representations from Multiple E-commerce Tasks

机译:感知您的用户深度:从多个电子商务任务中学习通用用户表示

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摘要

Tasks such as search and recommendation have become increasingly important for E-commerce to deal with the information overload problem. To meet the diverse needs of different users, personalization plays an important role. In many large portals such as Taobao and Amazon, there are a bunch of different types of search and recommendation tasks operating simultaneously for personalization. However, most of current techniques address each task separately. This is suboptimal as no information about users shared across different tasks. In this work, we propose to learn universal user representations across multiple tasks for more effective personalization. In particular, 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 are shared and learned in an end-to-end setting across multiple tasks. Benefiting from better information utilization of multiple tasks, the user representations are more effective to reflect their interests and are more general to be transferred to new tasks. We refer this work as Deep User Perception Network (DUPN) and conduct an extensive set of offline and online experiments. Across all tested five different tasks, our DUPN consistently achieves better results by giving more effective user representations. Moreover, we deploy DUPN in large scale operational tasks in Taobao. Detailed implementations, e.g., incremental model updating, are also provided to address the practical issues for the real world applications.
机译:搜索和推荐的任务对电子商务处理信息过载问题越来越重要。为满足不同用户的不同需求,个性化发挥着重要作用。在淘宝和亚马逊等许多大型门户中,有一堆不同类型的搜索和推荐任务同时运行个性化。但是,大多数当前技术分别地址每个任务。这是次优,因为没有关于不同任务共享的用户的信息。在这项工作中,我们建议在多个任务中学习普遍的用户表示,以获得更有效的个性化。特别地,通过集成所有相应的内容,行为和时间信息,由LSTM和注意机制建模用户行为序列(例如,单击,书签或购买)。用户表示在跨多个任务的端到端设置中共享和学习。受益于更好的信息利用多项任务,用户表示更有效地反映其兴趣,并且更普遍能够转移到新任务。我们将此工作称为深度用户感知网络(Dupn),并进行广泛的离线和在线实验。在所有测试的五个不同的任务中,我们的Dupn通过提供更有效的用户表示来始终如一地实现了更好的结果。此外,我们在淘宝的大规模运营任务中部署了Dupn。还提供了详细实现,例如增量模型更新,以解决现实世界应用程序的实际问题。

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