Télécom Paris is recruiting a Post-Doc in Machine Learning (Multiple Fairness in Recommending Systems)

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steph...@gmail.com

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Feb 3, 2025, 12:31:30 PM2/3/25
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Post-Doc in Machine Learning (Multiple Fairness in Recommending Systems)

 

The group dedicated to Research in Machine Learning, Statistics & Signal Processing (the research group S2A) in Télécom Paris is recruiting a postdoc  in Machine Learning (18 months contact, extendable to 36 months). The post-doc recruited will take part in an interdisciplinary collaborative research project involving the SES (Economics and Social Sciences) department of Télécom Paris and the Caisse des Dépôts et Consignations, a leading French public financial institution.

 

Research assignment

 

Research activities will focus on fairness issues for recommendation engines designed by means of machine-learning methods. With the explosion of digitized content available online, recommender systems have become an essential technology and a key element in the development of new services. In a commercial context, the algorithmic principles at work (e.g. collaborative filtering, user/content-based methods, hybrid approaches) in their operation are most often aimed exclusively at maximizing user satisfaction and increasing the platform's level of use. In the context of a public service, many other criteria and objectives must be integrated to ensure a fair service from the point of view of both users and suppliers (multi-sided fairness). It is precisely the subject of this collaborative project to propose and analyze (theoretically and empirically) methods for achieving acceptable trade-offs between the relevance of recommendations and bias mitigation. In addition to producing methodological research, the post-doc's mission will also include applied work on the current version of a deployed recommendation system, aimed at quantifying the presence of different types of bias resulting from its operation.


Keywords: public service recommender system, fair and explainable AI, bias mitigation, multi-sided fairness 


Supervision: the recruit will work under the supervision of

Sephan Clémençon (https://perso.telecom-paristech.fr/clemenco/)

Winston Maxwell (https://www.telecom-paris.fr/winston-maxwell).

Charlotte Laclau (https://laclauc.github.io/)


 

Skills

  • Education : PhD in Computer Science or in Applied Maths

  • A short international postdoctoral experience is welcome but not mandatory

  • English: fluent

  • Expertise in Python programming, familiarity with database queries

  • Capacity to work in a team and develop good relationships with colleagues in other disciplines

  • Excellent writing and pedagogical skills

Knowledge and experience required

 

  • Research publications in Machine Learning (e.g. in Neurips, ICML, AISTATS, …)

  • Knowledge of how recommending systems work

  • Taste for AI applications and interest in its societal aspects

 

Additional information


The position does not involve teaching. However, on a voluntary basis, the postdoc recruited may take part in machine-learning courses (undergraduate/master level) coordinated by the supervisory team.

 

The position

  • 18 months position (extendable to 36 months)

  • Télécom Paris, 9 place Marguerite Perey - 91120 Palaiseau - France

 

Application

  

Applicants should submit a single PDF file that includes:

  • motivation letter

  • curriculum vitae

  • one or two major publications

  • contact information for one or two references

 

Important dates

  • First-Quarter 2025: interviews with candidates (by visio-conference eventually)

  • Spring 2025: beginning

 

Contact for information/application

 

Stephan Clémençon stephan....@telecom-paris.fr 

Charlotte Laclau charlott...@telecom-paris.fr 

Winston Maxwell winston...@telecom-paris.fr 

 

Related Websites

 https://s2a.telecom-paris.fr/

www.telecom-paris.fr/ai-ethics





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