Fairness Through Regularization for Learning to Rank

02/11/2021
by   Nikola Konstantinov, et al.
0

Given the abundance of applications of ranking in recent years, addressing fairness concerns around automated ranking systems becomes necessary for increasing the trust among end-users. Previous work on fair ranking has mostly focused on application-specific fairness notions, often tailored to online advertising, and it rarely considers learning as part of the process. In this work, we show how to transfer numerous fairness notions from binary classification to a learning to rank context. Our formalism allows us to design a method for incorporating fairness objectives with provable generalization guarantees. An extensive experimental evaluation shows that our method can improve ranking fairness substantially with no or only little loss of model quality.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/01/2021

Calibrating Explore-Exploit Trade-off for Fair Online Learning to Rank

Online learning to rank (OL2R) has attracted great research interests in...
research
05/13/2019

The Price of Fairness for Indivisible Goods

We investigate the efficiency of fair allocations of indivisible goods u...
research
06/06/2023

Matched Pair Calibration for Ranking Fairness

We propose a test of fairness in score-based ranking systems called matc...
research
09/24/2020

Ranking for Individual and Group Fairness Simultaneously

Search and recommendation systems, such as search engines, recruiting to...
research
08/11/2023

Help or Hinder? Evaluating the Impact of Fairness Metrics and Algorithms in Visualizations for Consensus Ranking

For applications where multiple stakeholders provide recommendations, a ...
research
03/25/2021

Fairness in Ranking: A Survey

In the past few years, there has been much work on incorporating fairnes...
research
02/13/2023

Characterizing notions of omniprediction via multicalibration

A recent line of work shows that notions of multigroup fairness imply su...

Please sign up or login with your details

Forgot password? Click here to reset