论文标题
Glimg:顶部N推荐系统的全球和本地项目图
GLIMG: Global and Local Item Graphs for Top-N Recommender Systems
论文作者
论文摘要
基于图的建议模型可以很好地适用于Top-N推荐系统,因为它们能够捕获实体之间的潜在关系。但是,大多数现有方法仅构建所有用户共享的单个全局项目图,并遗憾地忽略了不同用户组之间的各种口味。受到本地模型推荐的成功的启发,本文提供了第一次尝试研究多个本地项目图以及用于基于图的建议模型的全局项目图。我们认为,在单个全局图或多个本地图上,有关全局图和本地图的建议优于表现。具体而言,我们提出了一个名为Glimg(全球和本地项目图)的基于图形的新型推荐模型,该模型同时捕获了全球和本地用户的口味。通过将全局图和本地图集成到适应的半监督学习模型中,用户对项目的偏好在全球范围内和本地传播。对现实世界数据集的广泛实验结果表明,我们提出的方法始终优于最先进的建议任务。
Graph-based recommendation models work well for top-N recommender systems due to their capability to capture the potential relationships between entities. However, most of the existing methods only construct a single global item graph shared by all the users and regrettably ignore the diverse tastes between different user groups. Inspired by the success of local models for recommendation, this paper provides the first attempt to investigate multiple local item graphs along with a global item graph for graph-based recommendation models. We argue that recommendation on global and local graphs outperforms that on a single global graph or multiple local graphs. Specifically, we propose a novel graph-based recommendation model named GLIMG (Global and Local IteM Graphs), which simultaneously captures both the global and local user tastes. By integrating the global and local graphs into an adapted semi-supervised learning model, users' preferences on items are propagated globally and locally. Extensive experimental results on real-world datasets show that our proposed method consistently outperforms the state-of-the art counterparts on the top-N recommendation task.