下一个目标是什么?用户偏好的动态模型

Francesco Sanna Passino, Lucas Maystre, Dmitrii Moor, Ashton Anderson, M. Lalmas
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引用次数: 10

摘要

我们考虑在线平台上预测用户偏好的问题。我们基于最近的研究发现,用户的偏好会随着时间的推移而改变,帮助用户扩大视野对于确保他们保持参与非常重要。大多数现有的用户偏好模型都试图捕捉同步偏好:“喜欢A的用户往往也喜欢B”。在本文中,我们认为这些模型无法预测不断变化的偏好。为了克服这个问题,我们试图理解用户偏好演变背后的结构。为此,我们提出了偏好转换模型(PTM),这是一个用户对物品类别偏好的动态模型。该模型可以估计不同类别的物品随时间的转移概率,这可以用来估计用户的品味是如何根据他们过去的历史发展的。我们在三个不同领域的数据上测试了模型的预测性能:音乐流媒体、餐馆推荐和电影推荐,并发现它优于竞争方法。然后,我们将重点放在一个音乐应用程序上,并检查我们的模型所学习的结构。我们发现PTM揭示了用户偏好轨迹随时间的显著规律。我们相信这些发现可以为新一代动态的、增强多样性的推荐系统提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Where To Next? A Dynamic Model of User Preferences
We consider the problem of predicting users’ preferences on online platforms. We build on recent findings suggesting that users’ preferences change over time, and that helping users expand their horizons is important in ensuring that they stay engaged. Most existing models of user preferences attempt to capture simultaneous preferences: “Users who like A tend to like B as well”. In this paper, we argue that these models fail to anticipate changing preferences. To overcome this issue, we seek to understand the structure that underlies the evolution of user preferences. To this end, we propose the Preference Transition Model (PTM), a dynamic model for user preferences towards classes of items. The model enables the estimation of transition probabilities between classes of items over time, which can be used to estimate how users’ tastes are expected to evolve based on their past history. We test our model’s predictive performance on a number of different prediction tasks on data from three different domains: music streaming, restaurant recommendations and movie recommendations, and find that it outperforms competing approaches. We then focus on a music application, and inspect the structure learned by our model. We find that the PTM uncovers remarkable regularities in users’ preference trajectories over time. We believe that these findings could inform a new generation of dynamic, diversity-enhancing recommender systems.
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