论文标题
具有变压器的内容感知协作过滤
Transformer-Empowered Content-Aware Collaborative Filtering
论文作者
论文摘要
基于知识图(KG)的协作过滤是一种有效的方法,可以通过利用KG的结构化信息来丰富项目和用户表示形式来个性化相对静态域(例如电影和书籍)的推荐系统。通过使用变压器来理解基于内容的过滤推荐系统中的丰富文本的动机,我们提出了基于来自KG的结构化信息以及基于基于变形金刚授权的内容的基于授权的内容过滤的无结构的内容功能来增强协作过滤建议的内容,以增强协作过滤建议。为了实现这一目标,我们采用了一种新颖的培训计划,跨系统的对比学习,以解决这两个截然不同的系统的不一致性,并提出了强大的协作过滤模型和在此建模框架内众所周知的NRMS系统的变体。我们还通过创建大型电影知识数据集为公共领域资源做出了贡献,并通过合并从外部来源爬网的文本说明来扩展已经公开的Amazon-Amazon-Book数据集。我们提出了实验结果表明,通过基于内容的过滤衍生而来的基于变压器的特征来增强协作过滤的表现优于强大的基线系统,从而提高了基于知识图的协作过滤系统利用项目内容信息的能力。
Knowledge graph (KG) based Collaborative Filtering is an effective approach to personalizing recommendation systems for relatively static domains such as movies and books, by leveraging structured information from KG to enrich both item and user representations. Motivated by the use of Transformers for understanding rich text in content-based filtering recommender systems, we propose Content-aware KG-enhanced Meta-preference Networks as a way to enhance collaborative filtering recommendation based on both structured information from KG as well as unstructured content features based on Transformer-empowered content-based filtering. To achieve this, we employ a novel training scheme, Cross-System Contrastive Learning, to address the inconsistency of the two very different systems and propose a powerful collaborative filtering model and a variant of the well-known NRMS system within this modeling framework. We also contribute to public domain resources through the creation of a large-scale movie-knowledge-graph dataset and an extension of the already public Amazon-Book dataset through incorporation of text descriptions crawled from external sources. We present experimental results showing that enhancing collaborative filtering with Transformer-based features derived from content-based filtering outperforms strong baseline systems, improving the ability of knowledge-graph-based collaborative filtering systems to exploit item content information.