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DLRS 2016 - 1st Workshop on Deep Learning for Recommender Systems (DLRS 2016)

Date2016-09-15

Deadline2016-06-24

VenueBoston, USA - United States USA - United States

Keywords

Websitehttps://dlrs-workshop.org

Topics/Call fo Papers

The aim of the workshop is to encourage the application of Deep Learning techniques in Recommender Systems, to promote research in Deep Learning methods specific to Recommender Systems, and to bring together researchers from the Recommender Systems and Deep Learning communities. The workshop is held in conjunction with the 10th ACM Conference on Recommender Systems (RecSys 2016), the premier venue for Recommender Systems research. The workshop will be held on the 15th of September 2016 in Boston.
TOPICS OF INTEREST
We encourage theoretical, experimental, and methodological developments advancing state-of-the-art knowledge in the area of Recommender Systems and Deep Learning. Areas of interest also encompass novel applications, using Deep Learning to solve the still-standing challenges in personalization technology, and applications of Deep Learning in related fields with clear relation to Recommender Systems. Topics include, but are not limited to the following:
I. User and item representations
Enhancement of existing recommendation algorithms through deep learning methods
Learning representations of items and/or users using multiple information sources
II. Dynamic behavior modeling
Dynamic temporal user behavior modeling
Session and intention modeling
III. Specialized recommendation methods using deep learning techniques
Incorporating unstructured data sources such as text, audio, video or image into recommendation algorithms
Context-aware recommender systems
Handling the cold-start problem with deep learning
Application specific deep learning based recommenders (e.g. music recommenders)
IV. Architecture
Novel deep learning network architectures for a particular recommendation task
Scalability of deep learning methods for real-time applications
Advances in deep learning technology for large scale recommendation
Special layers or units designed for recommender systems
Special activation functions or operators designed for recommender systems
V. Novel evaluation and explanation techniques
Evaluation and comparison of deep learning implementations for a recommendation task
Evaluating the state of the user
Sensitivity analysis of the network architecture
Explanation of recommendations based on deep learning
PAPER FORMAT AND SUBMISSION
Submissions and reviews are handled electronically via EasyChair at the following address: https://easychair.org/conferences/?conf=dlrs2016. Submissions should be prepared in PDF format according to the standard double-column ACM SIG proceedings format.
The ideal length of a paper for DLRS 2016 is between 4-8 pages, but submissions have no strict page limits. Although the authors should avoid submitting unnecessarily long papers in order not to overwhelm reviewers.
DLRS 2016 accepts original and novel contributions that are neither published nor under review in other venues. Self publishing of the submitted papers in public repositories is permitted and encouraged. We also encourage authors to make their code and datasets publicly available.
Papers must be electronically submitted through EasyChair by 23:59 UTC on the 24th of June, 2016. The authors should also submit their papers to arxiv.org and email their arxiv ID to us on the workshop’s email address.
All papers are peer reviewed by 3 members of the Program Committee consisting of researchers of deep learning and recommender systems.
Accepted papers are published in the workshop proceedings and time is allocated for their presentation at the workshop. At least one author of every accepted paper must attend the workshop and present their work.
IMPORTANT DATES
Submission deadline: 24 June, 2016
Notification: 1 August, 2016
Camera-ready paper deadline: 8 August, 2016
Workshop: 15 September, 2016

Last modified: 2016-04-01 00:09:37