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杨雨豪_推荐系统的大规模图预训练和微调.pdf

上传人: 张** 编号:169060 2024-07-06 26页 2.99MB

1、Yuhao Yang,Yuhao Yang,The University of Hong KongThe University of Hong Kong&WeChatWeChatGraphProGraphPro:Graph Pre-training and Prompt Learning for:Graph Pre-training and Prompt Learning for RecommendationRecommendation腾讯微信技术创新奖腾讯微信技术创新奖&犀牛鸟评选第二名犀牛鸟评选第二名GNNs are successful in RecsysGNNs are success

2、ful in RecsysLightGCN,He et al.2020SGL,Wu et al.2022RLMRec,Ren et al.2024GNNs are successful in RecsysGNNs are successful in RecsysSimGCL,Yu et al.2023Question:Are static GNNs enough for recommendation modeling?Question:Are static GNNs enough for recommendation modeling?The static setting differs gr

3、eatly from real-world recommendation problemsModel performances are hardly to be fairly evaluatedChallenges in deploying and translating in real-world applicationsStatic SettingReal-world Problem“We often conceptualize RecSys as the task of predicting missing values in a static user-item interaction

4、 matrix,rather than predicting a users decision on the next interaction within a dynamicdynamic,changingchanging,and application-specific contextapplication-specific context.”Aixin Sun,Beyond Collaborative Filtering:A Relook at Task Formulation in Recommender SystemsQuestion:Are static GNNs enough f

5、or recommendation modeling?Question:Are static GNNs enough for recommendation modeling?Real-world recommendation brings super large graphs with more than 1B edges,which even evolve continuallyHard to learn and update representationsQuestion:Are static GNNs enough for recommendation modeling?Question

6、:Are static GNNs enough for recommendation modeling?Introducing GraphPro:Pretraining and Introducing GraphPro:Pretraining and PromptingPromptingWhat can be a better training and evaluating settingtraining and evaluating setting for recommenders?How to pre-train and promptpre-train and prompt GNNs fo

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本文介绍了由杨宇奥等人在香港大学及微信图谱团队提出的GraphPro方法,该方法用于增强图神经网络(GNN)在推荐系统中的应用。文章指出静态GNN在处理推荐系统时存在局限性,因为它们无法很好地适应动态变化的真实世界问题。作者提出,GraphPro可以通过预训练和提示学习来提高GNN在推荐系统中的性能,并解决了静态GNN在实际应用中的泛化能力和可扩展性问题。 关键点包括: 1. GraphPro通过引入相对时间提示和图结构提示,增强GNN在动态环境下的表现。 2. 相对时间提示使用时间戳作为边的权重,以改进消息传递和聚合过程中的时间感知。 3. 图结构提示使用最近的历史图快照,为GNN提供用户兴趣和项目特征的更新信息。 4. GraphPro通过预训练和微调,在Taobao和Koubei数据集上表现优于全训练方法,在Amazon数据集上与全训练方法表现相当。 5. 在微信开放平台,GraphPro成功应用于动态个性化内容推荐,显著提升了用户体验。 此外,GraphPro的所有代码、数据、基线、训练日志都已开源,以促进学术界的进一步研究和合作。
"GraphPro如何提升GNN推荐效果?" "如何解决静态GNN在推荐建模中的局限?" "GraphPro在微信开放平台上的实际应用效果如何?"
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