The pervasive application of algorithmic decision-making is raising concerns on the risk of unintended bias in AI systems deployed in critical settings such as healthcare. The detection and mitigation of model bias is a very delicate task that should be tackled with care and involving domain experts in the loop. In this paper we introduce FairLens, a methodology for discovering and explaining biases. We show how this tool can audit a fictional commercial black-box model acting as a clinical decision support system (DSS). In this scenario, the healthcare facility experts can use FairLens on their historical data to discover the biases of the model before incorporating it into the clinical decision flow. FairLens first stratifies the availabl...
Artificial intelligence systems for health care, like any other medical device, have the potential t...
Abstract Purpose The new challenge in Artificial I...
As models based on machine learning continue to be developed for healthcare applications, greater ef...
The pervasive application of algorithmic decision-making is raising concerns on the risk of unintend...
Investigation of systemic biases in AI models for the clinical domain have been limited. We re-creat...
BACKGROUND: Although numerous studies have shown the potential of artificial intelligence (AI) syste...
Thesis: S.M. in Technology and Policy, Massachusetts Institute of Technology, School of Engineering,...
Data-centric research is all about trying to obtain useful insights on products that its researchers...
Multiple reporting guidelines for artificial intelligence (AI) models in healthcare recommend that m...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Artificial intelligence (AI) has an astonishing potential in assisting clinical decision making and ...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
In this digital era, we encounter automated\u3cbr/\u3edecisions made about or on behalf of us by the...
Artificial intelligence systems for health care, like any other medical device, have the potential t...
Abstract Purpose The new challenge in Artificial I...
As models based on machine learning continue to be developed for healthcare applications, greater ef...
The pervasive application of algorithmic decision-making is raising concerns on the risk of unintend...
Investigation of systemic biases in AI models for the clinical domain have been limited. We re-creat...
BACKGROUND: Although numerous studies have shown the potential of artificial intelligence (AI) syste...
Thesis: S.M. in Technology and Policy, Massachusetts Institute of Technology, School of Engineering,...
Data-centric research is all about trying to obtain useful insights on products that its researchers...
Multiple reporting guidelines for artificial intelligence (AI) models in healthcare recommend that m...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Artificial intelligence (AI) has an astonishing potential in assisting clinical decision making and ...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
In this digital era, we encounter automated\u3cbr/\u3edecisions made about or on behalf of us by the...
Artificial intelligence systems for health care, like any other medical device, have the potential t...
Abstract Purpose The new challenge in Artificial I...
As models based on machine learning continue to be developed for healthcare applications, greater ef...