In data mining we often have to learn from biased data, because, for instance, data comes from different batches or there was a gender or racial bias in the collection of social data. In some applications it may be necessary to explicitly control this bias in the models we learn from the data. This paper is the first to study learning linear regression models under constraints that control the biasing effect of a given attribute such as gender or batch number. We show how propensity modeling can be used for factoring out the part of the bias that can be justified by externally provided explanatory attributes. Then we analytically derive linear models that minimize squared error while controlling the bias by imposing constraints on the mean ...
In many application areas, predictive models are used to support or make important decisions. There ...
Discrimination discovery and prevention has received intensive attention recently. Discrimination ge...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...
Abstract—In data mining we often have to learn from biased data, because, for instance, data comes f...
Linear models in machine learning are extremely computational efficient but they have high represent...
One of the main challenges researchers face is to identify the most relevant features in a predictio...
Linear regression methods are commonly used by both researchers and data scientists due to their int...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Algorithms deployed in education can shape the learning experience and success of a student. It is t...
Despite the impressive prediction ability, machine learning models show discrimination towards certa...
Some learning techniques for classification tasks work indirectly, by first trying to fit a full pro...
This paper introduces an approach to fitting a constrained linear regression model to interval-value...
In many application areas, predictive models are used to support or make important decisions. There ...
<p>Linear regression model of markedness probabilities for semantically determined items.</p
A regression algorithm estimates the value of the target (response) as a function of the predictors ...
In many application areas, predictive models are used to support or make important decisions. There ...
Discrimination discovery and prevention has received intensive attention recently. Discrimination ge...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...
Abstract—In data mining we often have to learn from biased data, because, for instance, data comes f...
Linear models in machine learning are extremely computational efficient but they have high represent...
One of the main challenges researchers face is to identify the most relevant features in a predictio...
Linear regression methods are commonly used by both researchers and data scientists due to their int...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Algorithms deployed in education can shape the learning experience and success of a student. It is t...
Despite the impressive prediction ability, machine learning models show discrimination towards certa...
Some learning techniques for classification tasks work indirectly, by first trying to fit a full pro...
This paper introduces an approach to fitting a constrained linear regression model to interval-value...
In many application areas, predictive models are used to support or make important decisions. There ...
<p>Linear regression model of markedness probabilities for semantically determined items.</p
A regression algorithm estimates the value of the target (response) as a function of the predictors ...
In many application areas, predictive models are used to support or make important decisions. There ...
Discrimination discovery and prevention has received intensive attention recently. Discrimination ge...
Reinforcement learning is one of the paradigms and methodologies of machine learning developed in th...