Rawlsian Fairness in Online Bipartite Matching: Two-sided, Group, and Individual

01/16/2022
by   Seyed A. Esmaeili, et al.
13

Online bipartite-matching platforms are ubiquitous and find applications in important areas such as crowdsourcing and ridesharing. In the most general form, the platform consists of three entities: two sides to be matched and a platform operator that decides the matching. The design of algorithms for such platforms has traditionally focused on the operator's (expected) profit. Recent reports have shown that certain demographic groups may receive less favorable treatment under pure profit maximization. As a result, a collection of online matching algorithms have been developed that give a fair treatment guarantee for one side of the market at the expense of a drop in the operator's profit. In this paper, we generalize the existing work to offer fair treatment guarantees to both sides of the market simultaneously, at a calculated worst case drop to operator profit. We consider group and individual Rawlsian fairness criteria. Moreover, our algorithms have theoretical guarantees and have adjustable parameters that can be tuned as desired to balance the trade-off between the utilities of the three sides. We also derive hardness results that give clear upper bounds over the performance of any algorithm.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/21/2022

Bipartite Matchings with Group Fairness and Individual Fairness Constraints

We address group as well as individual fairness constraints in matchings...
research
11/27/2020

Group-level Fairness Maximization in Online Bipartite Matching

In typical online matching problems, the goal is to maximize the number ...
research
01/10/2023

Proportionally Fair Matching with Multiple Groups

The study of fair algorithms has become mainstream in machine learning a...
research
02/19/2020

Online Policies for Efficient Volunteer Crowdsourcing

Nonprofit crowdsourcing platforms such as food recovery organizations re...
research
12/18/2020

Fair for All: Best-effort Fairness Guarantees for Classification

Standard approaches to group-based notions of fairness, such as parity a...
research
09/18/2021

Fairness Maximization among Offline Agents in Online-Matching Markets

Matching markets involve heterogeneous agents (typically from two partie...
research
02/07/2018

Fair-by-design algorithms: matching problems and beyond

In discrete search and optimization problems where the elements that may...

Please sign up or login with your details

Forgot password? Click here to reset