With an increased focus on incorporating fairness in machine learning models, it becomes imperative not only to assess and mitigate bias at each stage of the machine learning pipeline but also to understand the downstream impacts of bias across stages. Here we consider a general, but realistic, scenario in which a predictive model is learned from (potentially biased) training data, and model predictions are assessed post-hoc for fairness by some auditing method. We provide a theoretical analysis of how a specific form of data bias, differential sampling bias, propagates from the data stage to the prediction stage. Unlike prior work, we evaluate the downstream impacts of data biases quantitatively rather than qualitatively and prove theoreti...
Access to a representative sample from the population is an assumption that underpins all of machine...
Previous studies have focused on the biases and feedback loops that occur in predictive policing alg...
D3.1 DETECTION MECHANISMS TO IDENTIFY DATA BIASES AND EXPLORATORY STUDIES ABOUT DIFFERENT DATA QUALI...
Recent research suggests that predictions made by machine-learning models can amplify biases present...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
A commonly observed pattern in machine learning models is an underprediction of the target feature, ...
Access to a representative sample from the population is an assumption that underpins all of machine...
Previous studies have focused on the biases and feedback loops that occur in predictive policing alg...
D3.1 DETECTION MECHANISMS TO IDENTIFY DATA BIASES AND EXPLORATORY STUDIES ABOUT DIFFERENT DATA QUALI...
Recent research suggests that predictions made by machine-learning models can amplify biases present...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
A commonly observed pattern in machine learning models is an underprediction of the target feature, ...
Access to a representative sample from the population is an assumption that underpins all of machine...
Previous studies have focused on the biases and feedback loops that occur in predictive policing alg...
D3.1 DETECTION MECHANISMS TO IDENTIFY DATA BIASES AND EXPLORATORY STUDIES ABOUT DIFFERENT DATA QUALI...