Events at The University of Manchester
  • University home
  • Events
  • Home
  • Exhibitions
  • Conferences
  • Lectures and seminars
  • Performances
  • Events for prospective students
  • Sustainability events
  • Family events
  • All Events

AI-Fun with ELLIS Seminar | Masha Vladimirova: Fairness in online systems

AI FUN & ELLIS
Dates:19 February 2025
Times:11:00 - 12:00
What is it:Seminar
Organiser:Faculty of Science and Engineering
Who is it for:University staff, External researchers, Alumni, Current University students
Speaker:Mariia Vladimirova
See travel and contact information
Add to your calendar

More information

  • AI Fundamentals Website
  • Registration link to join online

Other events

  • In category "Seminar"
  • In group "(DF) Data Science and AI"
  • By Faculty of Science and Engineering

The Manchester Centre for AI Fundamentals and Manchester's ELLIS Unit are co-hosting a series of seminars featuring expert researchers working in the fundamentals of AI.

Title: Fairness in online systems

Abstract: As online systems increasingly shape our digital experiences, from job recommendations to advertising and content moderation, ensuring fairness in these systems has become a critical challenge. Biases in data, algorithms, and user interactions can lead to unintended disparities, reinforcing societal inequalities. Traditional approaches, such as fairness through unawareness that ignore sensitive attributes often fail to address underlying biases, while real-world constraints, such as data limitations and competing optimization goals, add further complexity. In this talk, we explore fairness in online systems, focusing on bias detection, mitigation strategies, and trade-off between fairness and business objectives. Using real-world data from an online advertising platform, we highlight key challenges, recent advancements, and open questions. We aim to bridge the gap between theoretical fairness frameworks and their practical implementation in large-scale, real-world systems.

Bio: I am a senior research scientist at Criteo AI Lab in the Fundamental Deep Learning team. I contribute to both academic and industrial research, focusing on explaining and improving machine learning methods through probabilistic and causal statistical approaches. At Criteo, I lead research initiatives aimed at ensuring algorithmic fairness in online systems and provide consulting to policymakers on AI regulations.

In addition to my professional endeavors, I am an advocate for gender diversity and inclusivity in the tech industry, actively promoting and organizing events to foster equitable opportunities and representation.

Before joining Criteo, I did my postdoc at Inria Grenoble Rhone-Alpes in the Statify team. The goal was to continue my previous research on the exploration distributional properties of Bayesian neural networks. More specifically, I was interested in explaining the difference between deep learning models of wide and shallow regimes in order to improve the interpretability and efficiency of the models.

I obtained my PhD degree in applied mathematics in 2022 at the University Grenoble Aples and Inria reseach center. I was a part of Statify and Thoth teams, under supervision of Julyan Arbel and Jakob Verbeek. During November 2019-January 2020, I was visiting Duke University and working on prior predictive distributions in Bayesian neural networks under supervision of David Dunson. Prior to that, I obtained my Bachelor degree at Moscow Institute of Physics and Technology (MIPT) and did the second year of Master program at Grenoble Institute of Technology (Grenoble - INP, Ensimag).

Speaker

Mariia Vladimirova

  • https://sites.google.com/site/mrvladimirova/home

Travel and Contact Information

Find event

G1.07
Alan Turing Building
Manchester

Contact event

Centre for AI Fundamentals

ai-fun@manchester.ac.uk

Contact us

  • +44 (0) 161 306 6000

Find us

The University of Manchester
Oxford Rd
Manchester
M13 9PL
UK

Connect with the University

  • Facebook page for The University of Manchester
  • X (formerly Twitter) page for The University of Manchester
  • YouTube page for The University of Manchester
  • Instagram page for The University of Manchester
  • TikTok page for The University of Manchester
  • LinkedIn page for The University of Manchester

  • Privacy /
  • Copyright notice /
  • Accessibility /
  • Freedom of information /
  • Charitable status /
  • Royal Charter Number: RC000797
  • Close menu
  • Home
    • Featured events
    • Today's events
    • The Whitworth events
    • Manchester Museum events
    • Jodrell Bank Discovery Centre events
    • Martin Harris Centre events
    • The John Rylands Library events
    • Exhibitions
    • Conferences
    • Lectures and seminars
    • Performances
    • Events for prospective students
    • Sustainability events
    • Family events
    • All events