User Behavior Modeling (UBM) plays a critical role in user interest learning, which has been extensively used in recommender systems. Crucial interactive patterns between users and items have been exploited, which brings compelling improvements in many recommendation tasks. In this paper, we attempt to provide a thorough survey of this research topic. We start by reviewing the research background of UBM. Then, we provide a systematic taxonomy of existing UBM research works, which can be categorized into four different directions including Conventional UBM, Long-Sequence UBM, Multi-Type UBM, and UBM with Side Information. Within each direction, representative models and their strengths and weaknesses are comprehensively discussed. Besides, we elaborate on the industrial practices of UBM methods with the hope of providing insights into the application value of existing UBM solutions. Finally, we summarize the survey and discuss the future prospects of this field.
翻译:用户行为建模(UBM)在用户兴趣学习中发挥着关键作用,在推荐人系统中广泛使用了这种学习方法。用户和项目之间的关键互动模式得到了利用,这给许多建议任务带来了令人信服的改进。在本文件中,我们试图对这一研究专题进行彻底的调查。我们首先审查UBM的研究背景。然后,我们对现有UBM研究工作进行系统分类,可分为四个不同方向,包括常规UBM、长期序列UBM、多频谱UBM和带有侧边信息的UBM。在每一个方向上,全面讨论了具有代表性的模型及其优缺点。此外,我们详细阐述了UBM方法的工业做法,希望对现有UBM解决方案的应用价值提供深入了解。最后,我们总结了调查,并讨论了这个领域的未来前景。