https://github.com/hongleizhang/RSPapers
该项目提供了推荐系统领域14大类研究方向,包括一些关于推荐系统的经典综述文章、主流的推荐算法文章、社会化推荐算法论文、基于深度学习的推荐系统论文(包括目前较火的GCN网络)以及关于专门处理冷启动问题的相关论文、推荐中的效率问题以及推荐当中的探索与利用问题、推荐可解释性、基于评论的推荐等。当然该项目包含但不局限于以上这些模块。目前累计Star数量已达2.8k,感谢大家的贡献与支持。
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