Call for Papers: Workshop on Social Choice and Learning Algorithms at IJCAI 2026

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Nicholas Mattei

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Call for Papers: Workshop on Social Choice and Learning Algorithms at IJCAI 2026


We are delighted to announce that the 3rd Workshop on Social Choice and Learning Algorithms (SCaLA-26) will take place at IJCAI during August 2026 in Bremen, Germany. It will feature technical sessions, a keynote speaker, and opportunities to forge collaborations between researchers working in social choice and those working in machine learning.


The website and submission instructions can be found at the following link: https://sites.google.com/view/scala26 


The submission deadline is May 8, 2026. We encourage submissions of fully developed research projects, or extended abstracts representing preliminary explorations of novel ideas. Submissions should include components from both fields of social choice and machine learning (or closely related topics).


Topics of interest include (but not limited to):

  • Computational social choice

  • Fair Division

  • Matching

  • Voting theory

  • Sortition

  • Clustering

  • Ensemble learning

  • Explainable ML

  • Language models

  • Learning preferences

  • PAC-learning


Examples of interesting connections between these topics include, but are not at all limited to:

  • Using machine learning to learn new mechanisms for matching

  • Novel uses of social choice for ensemble learning

  • Exploring the application of fair division concepts to clustering problems, or vice-versa

  • Applying multi-winner voting concepts to multi-class classification tasks



Organizing Committee

Ben Armstrong

Saar Cohen

Nicholas Mattei

Zoi Terzopoulou



--
Nicholas Mattei
Associate Professor, Tulane University
Stanley Thomas Hall | 305B
Department of Computer Science
Tulane University
6823 St Charles Ave
New Orleans, LA 70118

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