Accepted Contributions
All papers can be found in the ACM Digital Library.
List of all papers accepted for RecSys 2021 (in alphabetical order).
- A Payload Optimization Method for Federated Recommender Systems
Farwa K. Khan, Adrian Flanagan, Kuan Eeik Tan, Zareen Alamgir, and Muhammad Ammad-ud-din - Accordion: A Trainable Simulator for Long-Term Interactive Systems
James McInerney, Ehtsham Elahi, Justin Basilico, Yves Raimond, and Tony Jebara - An Audit of Misinformation Filter Bubbles on YouTube: Bubble Bursting and Recent Behavior Changes
Matus Tomlein, Branislav Pecher, Jakub Simko, Ivan Srba, Robert Moro, Elena Stefancova, Michal Kompan, Andrea Hrckova, Juraj Podrouzek, and Maria Bielikova - Black-Box Attacks on Sequential Recommenders via Data-Free Model Extraction
Zhenrui Yue, Zhankui He, Huimin Zeng, and Julian McAuley - Burst-induced Multi-Armed Bandit for Learning Recommendation
Rodrigo Alves, Antoine Ledent, and Marius Kloft - cDLRM: Look Ahead Caching for Scalable Training of Recommendation Models
Keshav Balasubramanian, Abdulla Alshabanah, Joshua D Choe, and Murali Annavaram - Cold Start Similar Artists Ranking with Gravity-Inspired Graph Autoencoders
Guillaume Salha-Galvan, Romain Hennequin, Benjamin Chapus, Viet-Anh Tran, and Michalis Vazirgiannis - Debiased Explainable Pairwise Ranking from Implicit Feedback
Khalil Damak, Sami Khenissi, and Olfa Nasraoui - Denoising User-aware Memory Network for Recommendation
Zhi Bian, Shaojun Zhou, Hao Fu, Qihong Yang, Zhenqi Sun, Junjie Tang, Guiquan Liu, kaikui liu, and Xiaolong Li - Designing Online Advertisements via Bandit and Reinforcement Learning
Yusuke Narita, Shota Yasui, and Kohei Yata - Evaluating Off-Policy Evaluation: Sensitivity and Robustness
Yuta Saito, Takuma Udagawa, Haruka Kiyohara, Kazuki Mogi, Yusuke Narita, and Kei Tateno - EX3: Explainable Attribute-aware Item-set Recommendations
Yikun Xian, Tong Zhao, Jin Li, Jim Chan, Andrey Kan, Jun Ma, Xin Luna Dong, Christos Faloutsos, George Karypis, S. Muthukrishnan, and Yongfeng Zhang - Fast Multi-Step Critiquing for VAE-based Recommender Systems
Diego Antognini and Boi Faltings - Follow the guides: disentangling human and algorithmic curation in online music consumption
Quentin Villermet, Jérémie Poiroux, Manuel Moussallam, Thomas Louail, and Camille Roth - Hierarchical Latent Relation Modeling for Collaborative Metric Learning
Viet-Anh Tran, Guillaume Salha-Galvan, Romain Hennequin, and Manuel Moussallam - I want to break free! Recommending friends from outside the echo chamber
Antonela Tommasel, Juan Manuel Rodriguez, and Daniela Godoy - Information Interactions in Outcome Prediction: Quantification and Interpretation using Stochastic Block Models
Gaël Poux-Médard, Julien Velcin, and Sabine Loudcher - Large-scale Interactive Conversational Recommendation System
Ali Montazeralghaem, James Allan, and Philip S. Thomas - Large-Scale Modeling of Mobile User Click Behaviors Using Deep Learning
Xin Zhou and Yang Li - Learning An Adaptive Meta Model-Generator for Incrementally Updating Recommender Systems
Danni Peng, Sinno Jialin Pan, Jie Zhang, and Anxiang Zeng - Learning to Represent Human Motives for Goal-directed Web Browsing
Jyun-Yu Jiang, Chia-Jung Lee, Longqi Yang, Bahareh Sarrafzadeh, Brent Hecht, Jaime Teevan - Local Factor Models for Large-Scale Inductive Recommendation
Longqi Yang, Tobias Schnabel, Paul N. Bennett, and Susan Dumais - Matrix Factorization for Collaborative Filtering Is Just Solving an Adjoint Latent Dirichlet Allocation Model After All
Florian Wilhelm - Mitigating Confounding Bias in Recommendation via Information Bottleneck
Dugang Liu, Pengxiang Cheng, Hong Zhu, Zhenhua Dong, Xiuqiang He, Weike Pan, and Zhong Ming - Negative Interactions for Improved Collaborative-Filtering: Don’t go Deeper, go Higher
Harald Steck and Dawen Liang - Next-item Recommendations in Short Sessions
Wenzhuo Song, Shoujin Wang, Yan Wang, and SHENGSHENG WANG - Online Evaluation Methods for the Causal Effect of Recommendations
Masahiro Sato - Page-level Optimization of e-Commerce Item Recommendations
Chieh Lo, Hongliang Yu, Xin Yin, Krutika Shetty, Changchen He, Kathy Hu, Justin M Platz, Adam Ilardi, and Sriganesh Madhvanath - Partially Observable Reinforcement Learning for Dialog-based Interactive Recommendation
Yaxiong Wu, Craig Macdonald, and Iadh Ounis, - Pessimistic Reward Models for Off-Policy Learning in Recommendation
Olivier Jeunen and Bart Goethals - Privacy Preserving Collaborative Filtering by Distributed Mediation
Alon Ben Horin, and Tamir Tassa - ProtoCF: Prototypical Collaborative Filtering for Few-shot Item Recommendation
Aravind Sankar, Junting Wang, Adit Krishnan, and Hari Sundaram - Recommendation on Live-Streaming Platforms: Dynamic Availability and Repeat Consumption
Jeremie Rappaz, Julian McAuley, and Karl Aberer - Reverse Maximum Inner Product Search: How to efficiently find users who would like to buy my item?
Daichi Amagata and Takahiro Hara - Semi-Supervised Visual Representation Learning for Fashion Compatibility
Ambareesh Revanur, Vijay Kumar, and Deepthi Sharma - “Serving Each User”: Supporting Different Eating Goals Through a Multi-List Recommender Interface
Alain Starke, Edis Asotic, and Christoph Trattner - Shared Neural Item Representations for Completely Cold Start Problem
Ramin Raziperchikolaei, Guannan Liang, and Young-joo Chung - Sparse Feature Factorization for Recommender Systems with Knowledge Graphs
Antonio Ferrara, Vito Walter Anelli, Tommaso Di Noia, and Alberto Carlo Maria Mancino - Stronger Privacy for Federated Collaborative Filtering With Implicit Feedback
Lorenzo Minto, Moritz Haller, Ben Livshits, and Hamed Haddadi - The Dual Echo Chamber: Modeling Social Media Polarization for Interventional Recommending
Tim Donkers and Jürgen Ziegler - The role of preference consistency, defaults and musical expertise in users’ exploration behavior in a genre exploration recommender
Yu Liang and Martijn C. Willemsen - Together is Better: Hybrid Recommendations Combining Graph Embeddings and Contextualized Word Representations
Marco Polignano, Cataldo Musto, Marco de Gemmis, Pasquale Lops, and Giovanni Semeraro - Top-K Contextual Bandits with Equity of Exposure
Olivier Jeunen and Bart Goethals - Tops, Bottoms, and Shoes: Building Capsule Wardrobes via Cross-Attention Tensor Network
Huiyuan Chen, Yusan Lin, Fei Wang, and Hao Yang - Towards Source-Aligned Variational Models for Cross-Domain Recommendation
Aghiles Salah, Thanh Binh Tran, and Hady Lauw - Towards Unified Metrics for Accuracy and Diversity for Recommender Systems
Javier Parapar and Filip Radlinski - Transformers4Rec: Bridging the Gap between NLP and Sequential / Session-Based Recommendation
Gabriel de Souza Pereira Moreira, Sara Rabhi, Jeong Min Lee, Ronay Ak, and Even Oldridge - User Bias in Beyond-Accuracy Measurement of Recommendation Algorithms
Ningxia Wang, and Li Chen - Values of Exploration in Recommender Systems
Minmin Chen, Yuyan Wang, Can Xu, Ya Le, mohit sharma, Lee Richardson, and Ed Chi