电子商务多场景排序中用户自发行为的自监督学习

Yulong Gu, Wentian Bao, Dan Ou, Xiang Li, Baoliang Cui, Biyu Ma, Haikuan Huang, Qingwen Liu, Xiaoyi Zeng
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引用次数: 15

摘要

多场景学习排名对于推荐系统、搜索引擎和电子商务门户网站的在线广告至关重要,其中排名模型通常应用于许多场景。然而,现有的工作主要集中在单一场景的排名模型学习上,而对多场景的排名模型学习关注较少。我们确定了工业多场景排名系统中的两个实际挑战:(1)反馈回路问题,即模型总是在排名者自己选择的项目上进行训练。(2)小场景和新场景的训练数据不足。为了解决上述问题,我们提出了ZEUS,这是一个新的框架,它基于对用户自发行为(例如,在搜索框中直接搜索的查询,而不是排名系统推荐的查询)的预训练,学习了多种场景的排名模型。ZEUS将训练过程分解为两个阶段:基于预训练的自监督学习和微调。首先,ZEUS对用户的自发行为进行自监督学习,生成预训练模型。其次,ZEUS根据用户在多个场景下的隐式反馈对预训练模型进行微调。在阿里巴巴生产数据集上的大量实验证明了ZEUS的有效性,它明显优于最先进的方法。与最先进的方法相比,ZEUS的CTR、CVR和GMV平均分别提高了6.0%、9.7%和11.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Supervised Learning on Users' Spontaneous Behaviors for Multi-Scenario Ranking in E-commerce
Multi-scenario Learning to Rank is essential for Recommender Systems, Search Engines and Online Advertising in e-commerce portals where the ranking models are usually applied in many scenarios. However, existing works mainly focus on learning the ranking model for a single scenario, and pay less attention to learning ranking models for multiple scenarios. We identify two practical challenges in industrial multi-scenario ranking systems: (1) The Feedback Loop problem that the model is always trained on the items chosen by the ranker itself. (2) Insufficient training data for small and new scenarios. To address the above issues, we present ZEUS, a novel framework that learns a Zoo of ranking modEls for mUltiple Scenarios based on pre-training on users' spontaneous behaviors (e.g. queries which are directly searched in the search box and not recommended by the ranking system). ZEUS decomposes the training process into two stages: self-supervised learning based pre-training and fine-tuning. Firstly, ZEUS performs self-supervised learning on users' spontaneous behaviors and generates a pre-trained model. Secondly, ZEUS fine-tunes the pre-trained model on users' implicit feedback in multiple scenarios. Extensive experiments on Alibaba's production dataset demonstrate the effectiveness of ZEUS, which significantly outperforms state-of-the-art methods. ZEUS averagely achieves 6.0%, 9.7%, 11.7% improvement in CTR, CVR and GMV respectively than state-of-the-art method.
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