ML4SM: Workshop on Machine Learning for Streaming Media Austin, TX, United States, April 30, 2023 |
Conference website | https://ml4streamingmedia-workshop.github.io/www/index.html |
Abstract registration deadline | February 24, 2023 |
Submission deadline | March 15, 2023 |
In conjunction with | The WebConf 2023 (formerly WWW) |
Streaming media have been seeing massive year of year growth in terms of consumption hours recently. For many people, streaming services like Netflix, Spotify, YouTube, etc. have become part of everyday life and accessing and consuming media content via streaming is now the norm for people of all ages. Powered by Machine Learning (ML) algorithms, streaming services are becoming one the most visible and impactful applications of ML that directly interact with people and influence their lives.
Despite the rapid growth of streaming services, the research discussions around ML for streaming media remain fragmented across different conferences and workshops. Also, the gap between academic research and constraints and requirements in industry limits the broader impact of many contributions from academia. Therefore, we believe that there is an urgent need to: (i) build connections and bridge the gap by bringing together researchers and practitioners from both academia and industry working on these problems, (ii) attract ML researchers from other areas to streaming media problems, and (iii) bring up the pain points and battle scars in industry to which academia researchers can pay more attention.
With this motivation in mind, we are organizing a workshop on Machine Learning for Streaming Media in conjunction with the WebConf (formerly WWW) 2023. We invite quality research contributions, including original research, preliminary research results, and proposals for new work, to be submitted. All submitted papers will be peer reviewed by the program committee and judged for their relevance to the workshop, especially to the topics identified below, and their potential to generate discussion. Accepted submissions will be presented at the workshop and will be published in the companion (workshop) proceedings of the WebConf 2023. We welcome research that has been previously published or is under review elsewhere. Such articles should be clearly identified at the time of submission and will not be published in the proceedings.
Submission Guidelines
We invite quality research contributions, including original research, preliminary research results, and proposals for new work, to be submitted. We welcome research that has been previously published or is under review elsewhere. Such articles should be clearly identified at the time of submission and will not be published in the proceedings.
Submissions should not exceed six pages in length (including appendices and references). Papers must be submitted in PDF format according to the ACM template published in the ACM guidelines, selecting the generic “sigconf” sample. The PDF files must have all non-standard fonts embedded. Workshop papers must be self-contained and in English.
Submission link: https://easychair.org/conferences/?conf=thewebconf2023iwpd
List of Topics
The main topics we would like to consider for this workshop are
- Content Understanding
- Multimodal representation learning
- Feature extraction for audio, video, and image content
- Knowledge Graph generation for streaming media
- Semi-supervised learning for content understanding
- Metadata enrichment for music, podcast, video catalog
- Search and recommendation for streaming media
- Named entity recognition (e.g. identifying celebrities, hosts, artists)
- Conversational systems
- Reward modeling and shaping
- Item cold start problems and challenges
- Designing scalable ML systems
- Heterogeneous content recommendation
- Learning to rank
- Transfer learning
- Explainable recommendations
- Representation learning
- Graph learning algorithms for streaming media
- Measurement, Metrics & Evaluation
- Evaluation methodologies for streaming media search and recommendations
- Methodologies for valuation of content
- Measuring business impact of recommendation systems
- Life-time value modeling
- Churn prediction & retention modeling
- User Studies & Human-In the Loop
- User studies on real-world recommenders – Human-In the loop recommendations
- Mixed methods research
- User studies on preference elicitation
- Trust, Safety & Algorithmic Fairness
- Identifying misinformation and disinformation – Algorithmic fairness in recommendations
- Hate-speech and fake news detection
- Content moderation
- Societal impact of recommendation systems for streaming media
- Machine learning to optimize streaming quality of experience
Committees
Organizing committee
- Sudarshan Lamkhede - Manager, Machine Learning - Search and Recommendations, Netflix Research.
- Praveen Chandar - Staff Research Scientist, Spotify
- Vladan Radosavljevic - Machine Learning Engineering Manager, Spotify
- Amit Goyal - Senior Applied Scientist, Amazon Music
- Lan Luo - Associate Professor of Marketing, University of Southern California
Invited Speakers
- Thorsten Joachims, Professor in the CS Dept at Cornell University
- Laurent Charlin, Associate professor at HEC Montréal
- Jaya Kawale, VP of Machine Learning Engineering at Tubi
- Eva Zangerle, Assistant professor in the CS Dept at the University of Innsbruck, Austria
- Ben Carterette, Senior Research Manager at Spotify
- Netflix Invited Talk on ML for Video Optimization
Publication
ML4SM proceedings will be published in the companion (workshops) proceedings of the WebConf 2023, except the previously published papers.
Contact
All questions about submissions should be emailed to organizers-ml4sm@googlegroups.com