会议信息
RecSys 2026: ACM Conference on Recommender Systems
https://recsys.acm.org/recsys26/
截稿日期:
2026-04-14
通知日期:
2026-07-09
会议日期:
2026-09-28
会议地点:
Minneapolis, Minnesota, USA
届数:
20
CCF: b   CORE: b   QUALIS: b1   浏览: 42472   关注: 58   参加: 7

征稿
The 20th ACM Conference on Recommender Systems (RecSys 2026), the leading conference for research on the foundations and applications of recommendation technologies, will take place from September 28 to October 2nd, 2026, in Minneapolis, Minnesota, USA.

We look forward to receiving your contributions for RecSys 2026. Below, you will find the descriptions of different tracks accepting contributions. The “In-Brief” and “Important Dates” sections of the CFP discuss key points of attention for this call. In the rest of the CFP, we provide detailed information that authors should thoroughly review when preparing their submissions.

Main track (handled by the program chairs):

    Long papers: We welcome high-impact original papers that contribute to all aspects of recommender systems. The paper length should be commensurate with the depth of contribution, comprehensiveness of analyses, and thorough discussion of related work. Each accepted paper will be included in the conference proceedings and presented at the conference. We expect the review process to be highly selective.
    Short papers: This track is intended for contributions that can be described completely and rigorously within a smaller page limit. These papers should present focused, self-contained research stories supported by experimental validations.
    Past, present and future papers: To mark the twentieth year of the RecSys Conference, this track encourages papers that consider a broad perspective on how the field has evolved and the challenges and directions that lay ahead. 

Relevant Areas & Topics

    Foundations of recommender systems
    Human-centered and interactive recommendation
    Explainability, transparency, and user control in recommender systems
    Fairness, safety, diversity, bias-mitigation, and societal impact of recommender systems
    Legal and ethical aspects of recommender systems
    Sustainable and eco-aware recommender systems
    Recommenders for multi-stakeholder, cross-domain, and multimodal contexts
    Generative, agentic, and reasoning-based recommendation
    Conversational, knowledge-based, and context-aware recommenders
    Recommendation evaluation methodologies and metrics beyond accuracy
    Recommender systems data, reproducibility, and benchmarking resources
    Real-world applications, case studies, and deployment insights of recommenders

Other tracks (handled by their respective chairs):

    Research and Practice Notes (replacing late-breaking results): short presentations of preliminary work, mainly focused on fostering discussions with other members of the RecSys community.
    Demo: implementations of novel, interesting, and important recommender systems’ concepts or applications.
    Reproducibility: contributions that discuss several aspects of reproducibility of empirical results, such as new resources or novel evaluation methodologies.
    Industry: papers that discuss field experiences, deployments, user studies and real-world challenges faced by industry practitioners.
最后更新 Dou Sun 在 2026-01-03
录取率
时间提交数录取数录取率(%)
20202183917.9%
20191893619%
20181813217.7%
20171252620.8%
20161592918.2%
20151523523%
最佳论文
时间最佳论文
2025Beyond Top-1: Addressing Inconsistencies in Evaluating Counterfactual Explanations for Recommender Systems
2025You Don’t Bring Me Flowers: Mitigating Unwanted Recommendations Through Conformal Risk Control
2024Unlocking the Hidden Treasures: Enhancing Recommendations with Unlabeled Data
2024The MovieLens Beliefs Dataset: Collecting Pre-Choice Data for Online Recommender Systems
2024Towards Empathetic Conversational Recommender Systems
2023gSASRec: Reducing Overconfidence in Sequential Recommendation Trained with Negative Sampling
2023Going Beyond Local: Global Graph-Enhanced Personalized News Recommendations
2023Pairwise Intent Graph Embedding Learning for Context-Aware Recommendation
2023Interpretable User Retention Modeling in Recommendation
2023Scalable Approximate NonSymmetric Autoencoder for Collaborative Filtering
2023Of Spiky SVDs and Music Recommendation
2022Exploring the longitudinal effects of nudging on users’ music genre exploration behavior and listening preferences
2022Modelling Two-Way Selection Preference for Person-Job Fit
2022Denoising Self-Attentive Sequential Recommendation
2022RADio – Rank-Aware Divergence Metrics to Measure Normative Diversity in News Recommendations
2022RecPack: An(other) Experimentation Toolkit for Top-N Recommendation using Implicit Feedback Data
2021An Audit of Misinformation Filter Bubbles on YouTube: Bubble Bursting and Recent Behavior Changes
2021Pessimistic Reward Models for Off-Policy Learning in Recommendation
2021Connecting Students with Research Advisors Through User-Controlled Recommendation
2020Progressive Layered Extraction (PLE): A Novel Multi-Task Learning (MTL) Model for Personalized Recommendations
2020Exploiting Performance Estimates for Augmenting Recommendation Ensembles
2020ADER: Adaptively Distilled Exemplar Replay Towards Continual Learning for Session-based Recommendation
2019Pace my race: recommendations for marathon running
2019Are we really making much progress? A worrying analysis of recent neural recommendation approaches
2019Quick and Accurate Attack Detection in Recommender Systems through User Attributes
2018HOP-rec: High-order Proximity for Implicit Recommendation
2018Impact of Item Consumption on Assessment of Recommendations in User Studies
2018Generation Meets Recommendation: Proposing Novel Items for Groups of Users
2018Causal Embeddings for Recommendation
2017Modeling the Assimilation-Contrast Effects in Online Product Rating Systems: Debiasing and Recommendations
2017Translation-based Recommendation
2016Adaptive, Personalized Diversity for Visual Discovery
2016Local Item-Item Models For Top-N Recommendation
2015Context-Aware Event Recommendation in Event-based Social Networks
2015Crowd Sourcing, with a Few Answers: Recommending Commuters for Traffic Updates
2014Beyond Clicks: Dwell Time for Personalization
2013A Fast Parallel SGD for Matrix Factorization in Shared Memory Systems
2012CLiMF: Learning to Maximize Reciprocal Rank with Collaborative Less-is-More Filtering
2012Using Graph Partitioning Techniques for Neighbour Selection in User-Based Collaborative Filtering
2012Alternating Least Squares for Personalized Ranking
2012Ranking With Non-Random Missing Ratings: Influence Of Popularity And Positivity on Evaluation Metrics
2011OrdRec: An Ordinal Model for Predicting Personalized Item Rating Distributions
2011Utilizing Related Product for Post-Purchase Recommendation in E-commerce
2010A Matrix Factorization Technique with Trust Propagation for Recommendation in Social
2010Merging Multiple Criteria to Identify Suspicious Reviews
2010The Network Effects of Recommending Social Connections
2009Collaborative Prediction and Ranking with Non-Random Missing Data
2009Understanding the Effect of Adaptive Preference Elicitation Methods on User Satisfaction of a Recommender System
相关会议
CCFCOREQUALIS简称全称截稿日期通知日期会议日期
bbb1RecSysACM Conference on Recommender Systems2026-04-142026-07-092026-09-28
baa1DSNInternational Conference on Dependable Systems and Networks2025-11-272026-03-192026-06-22
b3MMSysACM Multimedia Systems Conference2025-11-142026-01-092026-04-04
aaa2EuroSysEuropean Conference on Computer Systems2025-09-182026-01-302026-04-13
aa*a1RTSSIEEE Real-Time Systems Symposium2025-05-222025-07-252025-12-02
cb1ICVSInternational Conference on Computer Vision Systems2023-06-122023-07-132023-09-27
a*RSSRobotics: Science and Systems Conference2019-02-012019-05-012019-06-22
a*ICISInternational Conference on Information Systems2017-05-052017-08-072017-12-10
aSCOPESInternational Workshop on Software and Compilers for Embedded Systems2017-03-032017-04-072017-06-12
a1IPTPSInternational workshop on Peer-To-Peer Systems2010-02-282010-04-27
相关期刊
CCF全称影响因子出版商ISSN
IEEE Transactions on Power Systems7.2IEEE0885-8950
cDecision Support Systems6.8Elsevier0167-9236
cInternational Journal of Neural Systems6.4World Scientific0129-0657
International Journal of General Systems2.9Taylor & Francis0308-1079
cExpert Systems2.3John Wiley & Sons1468-0394
aACM Transactions on Computer Systems2.000ACM0734-2071
Telecommunication Systems1.700Springer1018-4864
International Journal of Communication Systems1.700Wiley-Blackwell1074-5351
cReal-Time Systems1.400Springer0922-6443
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