[WIP] This repository contains recent research papers, datasets, and source codes (if any) for Group Recommendation. Free free to create a PR to merge.
- CoFeel: Using Emotions for Social Interaction in Group Recommender Systems. RecSys 2012. [pdf]
- Mathematical Modeling and Analysis of Product Rating with Partial Information. TKDD 2010. [pdf]
- Enhancing Group Recommendation by Incorporating Social Relationship Interactions. GROUP 2010. [pdf]
- Preference Aggregation in Group Recommender Systems for Committee Decision-Making. RecSys 2009. [pdf]
- A group recommendation system with consideration of interactions among group members. Expert Sys. Appl. 2008. [pdf]
- TV Program Recommendation for Multiple Viewers Based on user Profile Merging. UMUAI 2006. [pdf]
- Adaptive Radio: Achieving Consensus Using Negative Preferences. GROUP 2005. [pdf]
- More Than the Sum of Its Members: Challenges for Group Recommender Systems. AVI 2004. [pdf]
- MusicFX: An Arbiter of Group Preferences for Computer Supported Collaborative Workouts. CSCW 1998. [pdf]
- ART: group recommendation approaches for automatically detected groups. IJMLC 2015. [pdf]
- Group Recommendations with Rank Aggregation and Collaborative Filtering. RecSys 2010. [pdf]
- Group-Based Recipe Recommendations: Analysis of Data Aggregation Strategies. RecSys 2010. [pdf]
- State-of-the-Art in Group Recommendation and New Approaches for Automatic Identification of Groups. Inform. Retrieval and Mining in Distrib. Environments 2010. [pdf]
- Group Recommendation: Semantics and Efficiency. VLDB 2009. [pdf]
- Recommendation to Groups. The Adaptive Web 2007. [pdf]
- Group Modeling in a Public Space: Methods, Techniques, Experiences. WSEAS 2005. [pdf]
- Flytrap: Intelligent Group Music Recommendation. IUI 2002. [pdf]
- PolyLens: A Recommender System for Groups of Users. ECSCW 2001. [pdf]
- Centrality-based Group Formation in Group Recommender Systems. WWW 2017. [pdf]
- Recommending New Items to Ephemeral Groups Using Contextual User Influence. RecSys 2016. [pdf]
- A General Graph-based Model for Recommendation in Event-based Social Networks. ICDE 2015. [pdf]
Extend: A General Recommendation Model for Heterogeneous Networks. TKDE 2016. [pdf] - COM: a Generative Model for Group Recommendation. KDD 2014. [pdf]
- Development of a group recommender application in a Social Network. KBS 2014 [pdf]
- Combining Latent Factor Model with Location Features for Event-based Group Recommendation. KDD 2013. [pdf]
- Users' Satisfaction in Recommendation Systems for Groups: an Approach Based on Noncooperative Games. WWW 2013. [pdf]
- Probabilistic Group Recommendation via Information Matching. WWW 2013. [pdf]
- Exploring Personal Impact for Group Recommendation. CIKM 2012. [pdf]
- Exploring Social Influence for Recommendation - A Generative Model Approach. SIGIR 2012. [pdf]
- Event-based Social Networks: Linking the Online and Offline Social Worlds. KDD 2012. [pdf]
- Group Recommendation using Feature Space Representing Behavioral Tendency and Power Balance among Members. RecSys 2011. [pdf]
- CATS: A Synchronous Approach to Collaborative Group Recommendation. FLAIRS 2006. [pdf]
- Group-Aware Long- and Short-Term Graph Representation Learning for Sequential Group Recommendation. SIGIR 2020 [pdf]
- GAME: Learning Graphical and Attentive Multi-view Embeddings for Occasional Group Recommendation. SIGIR 2020 [pdf]
- GroupIM: A Mutual Information Maximizing Framework for Neural Group Recommendation. SIGIR 2020 [pdf]
- Interact and Decide: Medley of Sub-Attention Networks for Effective Group Recommendation. SIGIR 2019. [pdf]
- Attentive Group Recommendation. SIGIR 2018. [pdf], [code]
Extend: Social-enhanced Attentive Group Recommendation. TKDE 2019. [pdf], [code] - Deep Modeling of Group Preferences for Group-Based Recommendation. AAAI 2014. [pdf]
- Meetup [paper], [data]
- MovieLens [paper]
- Mafengwo [paper], [data]
- CAMRa2011 [paper], [data]
- Plancast [paper]
- Whrrl [paper]
- Jiepang [paper]
Note: you need to contact the authors for the original crawled datasets or follow the experimental setup section in the papers to reconstruct your own datasets.