国际顶级学术会议WWW2020定在2020年4月20-24日于
中国
台湾举办。受COVID-19疫情影响(
疫情赶紧过去吧
),大会将在线上举行。今天是大会开始的第一天。
本次会议共收到了1129篇论文投稿,录用217篇,录取率仅为19.2%。其中关于推荐系统的论文大约38篇,推荐系统占比17.5%,可见推荐系统的研究受到学术界的广泛关注。另外,值得注意的是,接收的推荐系统论文中大部分都是与工业界合作的产物,因此不管是学术界还是工业界,推荐系统都是研究的热点与重点。
| 分类 |
数量 |
| Practical RS |
6 |
| Sequential RS |
6 |
Efficient RS
|
4 |
| Social RS |
3 |
General RS
|
3
|
RL for RS
|
3
|
POI RS
|
2
|
Cold Start in RS
|
2
|
Security RS
|
2 |
Fairness RS
|
2 |
Explianability for RS
|
2
|
Cross-domain RS
|
1
|
Knowledge Graph RS
|
1 |
| Conversational RS |
1 |
CTR for RS
|
1
|
可见,推荐系统应用的文章以及序列化推荐的文章占比较大;随后是提升推荐效率、社会化推荐、常规推荐以及利用强化学习推荐;其次是兴趣点推荐、冷启动问题研究、推荐系统中的安全性、推荐公平性以及可解释推荐的文章;最后是各有一篇跨域推荐、利用知识图推荐、对话推荐系统以及用于点击率预估的推荐。
2 论文列表
-
Graph Enhanced Representation Learning for News Recommendation
-
Weakly Supervised Attention for Hashtag Recommendation using Graph Data
-
Personalized Employee Training Course Recommendation with Career Development Awareness
-
Understanding User Behavior For Document Recommendation
-
Recommending Themes for Ad Creative Design via Visual-Linguistic Representations
-
paper2repo: GitHub Repository Recommendation for Academic Papers
-
Adaptive Hierarchical Translation-based Sequential Recommendation
-
Attentive Sequential Model of Latent Intent for Next Item Recommendation
-
Déjà vu: A Contextualized Temporal Attention Mechanism for Sequential Recommendation
-
Intention Modeling from Ordered and Unordered Facets for Sequential Recommendation
-
Future Data Helps Training: Modeling Future Contexts for Session-based Recommendation
-
Keywords Generation Improves E-Commerce Session-based Recommendation
-
Learning to Hash with Graph Neural Networks for Recommender Systems
-
LightRec: a Memory and Search-Efficient Recommender System
-
A Generalized and Fast-converging Non-negative Latent Factor Model for Predicting User Preferences in Recommender Systems
-
Efficient Non-Sampling Factorization Machines for Optimal Context-Aware Recommendation
-
Clustering and Constructing User Coresets to Accelerate Large-scale Top-K Recommender Systems
-
The Structure of Social Influence in Recommender Networks
-
Few-Shot Learning for New User Recommendation in Location-based Social Networks
-
Directional and Explainable Serendipity Recommendation
-
Dual Learning for Explainable Recommendation: Towards Unifying User Preference Prediction and Review Generation
-
Next Point-of-Interest Recommendation on Resource-Constrained Mobile Devices
-
A Category-Aware Deep Model for Successive POI Recommendation on Sparse Check-in Data
-
Efficient Neural Interaction Function Search for Collaborative Filtering
-
Learning the Structure of Auto-Encoding Recommenders
-
Deep Global and Local Generative Model for Recommendation
-
Hierarchical Visual-aware Minimax Ranking Based on Co-purchase Data for Personalized Recommendation
-
FairRec: Two-Sided Fairness for Personalized Recommendations in Two-Sided Platforms
-
Off-policy Learning in Two-stage Recommender Systems
-
Hierarchical Adaptive Contextual Bandits for Resource Constraint based Recommendation
-
Exploiting Aesthetic Preference in Deep Cross Networks for Cross-domain Recommendation
3 官方Tutorial
最后,WWW2020还进行了两场关于推荐与搜索的Tutorial,分别是利用深度迁移学习的搜索与推荐和可信任的推荐与搜索系统,感兴趣的小伙伴可以学习一下。
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获取以上WWW2020推荐系统论文,请关注公众号后台回复【0420】即可。