Fairness, through its many forms and definitions, has become an important issue facing the machine learning community. In this work, we consider how to incorporate group fairness constraints into kernel regression methods, applicable to Gaussian processes, support vector machines, neural network regression and decision tree regression. Further, we focus on examining the effect of incorporating these constraints in decision tree regression, with direct applications to random forests and boosted trees amongst other widespread popular inference techniques. We show that the order of complexity of memory and computation is preserved for such models and tightly binds the expected perturbations to the model in terms of the number of leaves of the ...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
A central goal of algorithmic fairness is to reduce bias in automated decision making. An unavoidabl...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
We tackle the problem of algorithmic fairness, where the goal is to avoid the unfairly influence of ...
In this paper, we present a general framework for estimating regression models subject to a user-def...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
In this paper we present a general framework for estimating regression models subject to a user-defi...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Machine learning systems are increasingly being used to make impactful decisions such as loan applic...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
A central goal of algorithmic fairness is to reduce bias in automated decision making. An unavoidabl...
We study the problem of formally verifying individual fairness of decision tree ensembles, as well a...
We tackle the problem of algorithmic fairness, where the goal is to avoid the unfairly influence of ...
In this paper, we present a general framework for estimating regression models subject to a user-def...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
In this paper we present a general framework for estimating regression models subject to a user-defi...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Machine learning systems are increasingly being used to make impactful decisions such as loan applic...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
A central goal of algorithmic fairness is to reduce bias in automated decision making. An unavoidabl...