Difference between revisions of "RecSys 2018"
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|has program chair=Xavier Amatriain, John O’Donovan | |has program chair=Xavier Amatriain, John O’Donovan | ||
|Acronym =RecSys 2018 | |Acronym =RecSys 2018 | ||
− | |End date =2018 | + | |End date =2018-10-07 |
|Series =RecSys | |Series =RecSys | ||
|Type =Conference | |Type =Conference | ||
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|State =CA/BC | |State =CA/BC | ||
|City =CA/BC/Vancouver | |City =CA/BC/Vancouver | ||
+ | |Year =2018 | ||
|Homepage =https://recsys.acm.org/recsys18/ | |Homepage =https://recsys.acm.org/recsys18/ | ||
− | |Start date =2018 | + | |Start date =2018-10-02 |
|Title =12th ACM Conference on Recommender Systems | |Title =12th ACM Conference on Recommender Systems | ||
|Accepted papers =81 | |Accepted papers =81 |
Revision as of 03:33, 19 November 2021
Event Rating
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List of all ratings can be found at RecSys 2018/rating
RecSys 2018 | |
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12th ACM Conference on Recommender Systems
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Event in series | RecSys |
Dates | 2018-10-02 (iCal) - 2018-10-07 |
Homepage: | https://recsys.acm.org/recsys18/ |
Location | |
Location: | CA/BC/Vancouver, CA/BC, CA |
Important dates | |
Abstracts: | 2018/04/30 |
Papers: | 2018/05/07 |
Submissions: | 2018/05/07 |
Camera ready due: | 2018/08/06 |
Papers: | Submitted 331 / Accepted 81 (24.5 %) |
Committees | |
General chairs: | Sole Pera, Michael Ekstrand |
PC chairs: | Xavier Amatriain, John O’Donovan |
Table of Contents | |
Topics of interest for RecSys 2018 include (but are not limited to):
- Conversational recommender systems
- Novel machine learning approaches to recommendation algorithms
- Evaluation metrics and studies
- Explanations and evidence
- Algorithm scalability, performance, and implementations
- Innovative/New applications
- Voice, VR, and other novel interaction paradigms
- Case studies of real-world implementations
- Preference elicitation
- Privacy and Security
- Economic models and consequences of recommender systems
- Personalisation
- Social recommenders
- User modelling