Fairness-Aware Online Meta-learning

08/21/2021
by   Chen Zhao, et al.
0

In contrast to offline working fashions, two research paradigms are devised for online learning: (1) Online Meta Learning (OML) learns good priors over model parameters (or learning to learn) in a sequential setting where tasks are revealed one after another. Although it provides a sub-linear regret bound, such techniques completely ignore the importance of learning with fairness which is a significant hallmark of human intelligence. (2) Online Fairness-Aware Learning. This setting captures many classification problems for which fairness is a concern. But it aims to attain zero-shot generalization without any task-specific adaptation. This therefore limits the capability of a model to adapt onto newly arrived data. To overcome such issues and bridge the gap, in this paper for the first time we proposed a novel online meta-learning algorithm, namely FFML, which is under the setting of unfairness prevention. The key part of FFML is to learn good priors of an online fair classification model's primal and dual parameters that are associated with the model's accuracy and fairness, respectively. The problem is formulated in the form of a bi-level convex-concave optimization. Theoretic analysis provides sub-linear upper bounds for loss regret and for violation of cumulative fairness constraints. Our experiments demonstrate the versatility of FFML by applying it to classification on three real-world datasets and show substantial improvements over the best prior work on the tradeoff between fairness and classification accuracy

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/20/2022

Adaptive Fairness-Aware Online Meta-Learning for Changing Environments

The fairness-aware online learning framework has arisen as a powerful to...
research
02/22/2019

Online Meta-Learning

A central capability of intelligent systems is the ability to continuous...
research
05/31/2023

Towards Fair Disentangled Online Learning for Changing Environments

In the problem of online learning for changing environments, data are se...
research
10/22/2019

Online Meta-Learning on Non-convex Setting

The online meta-learning framework is designed for the continual lifelon...
research
08/18/2022

Meta-Learning Online Control for Linear Dynamical Systems

In this paper, we consider the problem of finding a meta-learning online...
research
02/04/2021

Meta-strategy for Learning Tuning Parameters with Guarantees

Online gradient methods, like the online gradient algorithm (OGA), often...
research
11/16/2021

Online Meta Adaptation for Variable-Rate Learned Image Compression

This work addresses two major issues of end-to-end learned image compres...

Please sign up or login with your details

Forgot password? Click here to reset