When machine-learning algorithms are deployed in high-stakes decisions, we want to ensure that their deployment leads to fair and equitable outcomes. This concern has motivated a fast-growing literature that focuses on diagnosing and addressing disparities in machine predictions. However, many machine predictions are deployed to assist in decisions where a human decision-maker retains the ultimate decision authority. In this article, we therefore consider how properties of machine predictions affect the resulting human decisions. We show in a formal model that the inclusion of a biased human decision-maker can revert common relationships between the structure of the algorithm and the qualities of resulting decisions. Specifically, we docume...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
With widespread use of machine learning methods in numerous domains involving humans, several studie...
The advent of powerful prediction algorithms led to increased automation of high-stake decisions reg...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Algorithms are increasingly offered for human decision-making processes to support individuals with ...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
How fair do people perceive government decisions based on algorithmic predictions? And to what exten...
Most research on fairness in Machine Learning assumes the relationship between fairness and accuracy...
As algorithms are increasingly used to make important decisions that affect human lives, ranging fro...
Abstract Recent advances in machine learning methods have created opportunities to el...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
With widespread use of machine learning methods in numerous domains involving humans, several studie...
The advent of powerful prediction algorithms led to increased automation of high-stake decisions reg...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Algorithms are increasingly offered for human decision-making processes to support individuals with ...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
How fair do people perceive government decisions based on algorithmic predictions? And to what exten...
Most research on fairness in Machine Learning assumes the relationship between fairness and accuracy...
As algorithms are increasingly used to make important decisions that affect human lives, ranging fro...
Abstract Recent advances in machine learning methods have created opportunities to el...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...