论文标题
MRIF:多分辨率的利息融合供推荐
MRIF: Multi-resolution Interest Fusion for Recommendation
论文作者
论文摘要
个性化建议的主要任务是根据用户的历史行为来捕获用户的兴趣。推荐系统的最新进展主要集中在使用基于深度学习的方法准确地对用户的偏好进行建模。用户兴趣有两个重要的属性,一个是用户的兴趣是动态的,并且随着时间的流逝而发展,另一个是用户的兴趣具有不同的分辨率或时间范围,或者是时间范围,例如长期和短期偏好。现有方法要么使用经常性的神经网络(RNN)来解决用户利益的漂移而不考虑不同的时间范围,要么设计两个不同的网络以分别建模长期和短期偏好。本文提出了一个多分辨率的利息融合模型(MRIF),该模型将用户利益的两种特性都考虑到了。所提出的模型能够捕获不同时间范围内用户兴趣的动态变化,并提供了一种将一组多分辨率用户兴趣的有效方法结合起来,以做出预测。实验表明,我们的方法始终超过最先进的建议方法。
The main task of personalized recommendation is capturing users' interests based on their historical behaviors. Most of recent advances in recommender systems mainly focus on modeling users' preferences accurately using deep learning based approaches. There are two important properties of users' interests, one is that users' interests are dynamic and evolve over time, the other is that users' interests have different resolutions, or temporal-ranges to be precise, such as long-term and short-term preferences. Existing approaches either use Recurrent Neural Networks (RNNs) to address the drifts in users' interests without considering different temporal-ranges, or design two different networks to model long-term and short-term preferences separately. This paper presents a multi-resolution interest fusion model (MRIF) that takes both properties of users' interests into consideration. The proposed model is capable to capture the dynamic changes in users' interests at different temporal-ranges, and provides an effective way to combine a group of multi-resolution user interests to make predictions. Experiments show that our method outperforms state-of-the-art recommendation methods consistently.