posted by user: cuixiquan || 2365 views || tracked by 2 users: [display]

OARS 2021 : KDD 2021 Workshop on Online and Adaptative Recommender System (OARS)

FacebookTwitterLinkedInGoogle

Link: https://oars-workshop.github.io/
 
When Aug 14, 2021 - Aug 18, 2021
Where Virtual
Submission Deadline May 19, 2021
Notification Due Jun 10, 2021
Final Version Due Aug 1, 2021
Categories    data science   recommender system   artificial intelligence   machine learning
 

Call For Papers

KDD 2021 Workshop on Online and Adaptative Recommender System (OARS)

Call For Papers
==================

KDD OARS is a full day workshop taking place on Aug 14-18th, 2021 in conjunction with KDD 2021 in Singapore.

Workshop website: https://oars-workshop.github.io/

Important Dates:
==================
- Submissions Due - May 19th, 2021
- Notification - June 10th, 2021
- Camera Ready Version of Papers Due - August 1st, 2021
- KDD OARS Full day Workshop - August 14-18th, 2021

Details:
==================
The KDD workshop on online and adaptative recommender systems (OARS) will serve as a platform for publication and discussion of OARS. This workshop will bring together practitioners and researchers from academia and industry, to discuss the challenges and approaches to implement OARS algorithms and systems and improve user experience by better modeling and responding to user intent.

Many recommender systems deployed in the real world rely on categorical user-profiles and/or pre-calculated recommendation actions that stay static during a user session. Recent trends suggest that recommender systems should model user intent in real time and constantly adapt to meet user needs at the moment or change user behavior in situ. In addition, various techniques have been proposed to help recommender systems adapt to new users, items, or behaviors. Some strategies to build “adaptive” recommenders include:
Systems for online training, e.g. updating the parameters of a pre-trained model to a new user.
Feature-based systems that handle cold-start scenarios, and can gracefully adapt to a combination of cold- and warm users/items.
Systems that avoid modeling users at all (e.g. session-based recommenders that directly learn from item interactions without needing user terms)
Systems that adapt to new behaviors through RL or other adaptive learning algorithms.

We invite submission of papers and posters of two to ten pages (including references), representing original research, preliminary research results, proposals for new work, and position and opinion papers. All submitted papers and posters will be single-blind and will be peer reviewed by an international program committee of researchers of high repute. Accepted submissions will be presented at the workshop.

Topics of interest include, but are not limited to:
====================================
Novel algorithms and paradigms
- online and adaptive neural recommender
- reinforcement learning (on-policy, off-policy, offline RL, and other relevant subfields)
- online/streaming learning
- interactive and conversational recommender
- extreme classification
- graph recommender

Applications
- product recommendation
- content recommendation
- ads recommendation
- fashion and decor recommendation
- job recommendation
- intervention/behavior change/healthy life-style recommendation

User modeling and representations
- implicit and explicit user intent modeling
- dynamic user intent modeling
- visual/style/taste modeling
- combination of in-session intent with long term user interest
- incorporation of knowledge graph
- representation learning

Architecture and Infrastructure
- scalability of neural methods for large scale real-time recommendations
- steaming and event-driven processing infrastructures

Evaluation and explanation methodologies
- evaluation, comparison, explanation of OARS for a recommendation task
- off-policy and counterfactual evaluation

Social and user impact
- UX for OARS
- welfare and objectives of OARS (CTR, dwell-time, diversity, multi-objectives, long term objectives)
- privacy and ethics considerations

Submission Instructions:
==================
All papers will be peer reviewed (single-blind) by the program committee and judged by their relevance to the workshop, especially to the main themes identified above, and their potential to generate discussion.

All submissions must be formatted according to the ACM template guidelines https://www.acm.org/publications/proceedings-template

Submissions must describe work that is not previously published, not accepted for publication elsewhere, and not currently under review elsewhere. All submissions must be in English.

Please note that at least one of the authors of each accepted paper must register for the workshop and attend the online session to present the paper during the workshop.

Submissions to KDD OARS workshop should be made at https://easychair.org/my/conference?conf=oarskdd2021

ORGANIZERS:
==================
Xiquan Cui The Home Depot, USA
Estelle Afshar The Home Depot, USA
Khalifeh Al-Jadda The Home Depot, USA
Srijan Kumar Georgia Institute of Technology, USA
Julian McAuley UCSD, USA
Kamelia Aryafar Google Inc, USA
Vachik Dave Walmart Labs, USA
Mohammad Korayem CareerBuilder, Canada
Tao Ye Amazon, USA
Contact: Please direct all your queries to xiquan_cui@homedepot.com for help.

Related Resources

IEEE-Ei/Scopus-ITCC 2025   2025 5th International Conference on Information Technology and Cloud Computing (ITCC 2025)-EI Compendex
KDD 2025   31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining
KDD 2024   30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining
SPIE-Ei/Scopus-DMNLP 2025   2025 2nd International Conference on Data Mining and Natural Language Processing (DMNLP 2025)-EI Compendex&Scopus
CIKM OARS 2024   CIKM 2024 Workshop on Online and Adaptive Recommender Systems (OARS)
Ei/Scopus-ACAI 2024   2024 7th International Conference on Algorithms, Computing and Artificial Intelligence(ACAI 2024)
IEEE-Ei/Scopus-CNIOT 2025   2025 IEEE 6th International Conference on Computing, Networks and Internet of Things (CNIOT 2025) -EI Compendex
SPIE-Ei/Scopus-CMLDS 2025   2025 2nd International Conference on Computing, Machine Learning and Data Science (CMLDS 2025) -EI Compendex & Scopus
KaRS 2024   Sixth Knowledge-aware and Conversational Recommender Systems Workshop (KaRS 2024)