Bias in machine learning has rightly received significant attention over the past decade. However, most fair machine learning (fair-ML) works to address bias in decision-making systems has focused solely on the offline setting. Despite the wide prevalence of online systems in the real world, work on identifying and correcting bias in the online setting is severely lacking. The unique challenges of the online environment make addressing bias more difficult than in the offline setting. First, Streaming Machine Learning (SML) algorithms must deal with the constantly evolving real-time data stream. Secondly, they need to adapt to changing data distributions (concept drift) to make accurate predictions on new incoming data. Incorporating fairnes...
Federated learning is an emerging collaborative learning paradigm of Machine learning involving dist...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
We study a fair machine learning (ML) setting where an 'upstream' model developer is tasked with pro...
With the fast development of algorithmic governance, fairness has become a compulsory property for m...
International audienceFairness emerged as an important requirement to guarantee that Machine Learnin...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
International audienceUnintended biases in machine learning (ML) models are among the major concerns...
Thesis (Master's)--University of Washington, 2018Machine learning plays an increasingly important ro...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
Fairness-aware mining of massive data streams is a growing and challenging concern in the contempora...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
Federated learning is an emerging collaborative learning paradigm of Machine learning involving dist...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
We study a fair machine learning (ML) setting where an 'upstream' model developer is tasked with pro...
With the fast development of algorithmic governance, fairness has become a compulsory property for m...
International audienceFairness emerged as an important requirement to guarantee that Machine Learnin...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
International audienceUnintended biases in machine learning (ML) models are among the major concerns...
Thesis (Master's)--University of Washington, 2018Machine learning plays an increasingly important ro...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
Fairness-aware mining of massive data streams is a growing and challenging concern in the contempora...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
Federated learning is an emerging collaborative learning paradigm of Machine learning involving dist...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...