Towards Unbiased and Accurate Deferral to Multiple Experts

02/25/2021
by   Vijay Keswani, et al.
0

Machine learning models are often implemented in cohort with humans in the pipeline, with the model having an option to defer to a domain expert in cases where it has low confidence in its inference. Our goal is to design mechanisms for ensuring accuracy and fairness in such prediction systems that combine machine learning model inferences and domain expert predictions. Prior work on "deferral systems" in classification settings has focused on the setting of a pipeline with a single expert and aimed to accommodate the inaccuracies and biases of this expert to simultaneously learn an inference model and a deferral system. Our work extends this framework to settings where multiple experts are available, with each expert having their own domain of expertise and biases. We propose a framework that simultaneously learns a classifier and a deferral system, with the deferral system choosing to defer to one or more human experts in cases of input where the classifier has low confidence. We test our framework on a synthetic dataset and a content moderation dataset with biased synthetic experts, and show that it significantly improves the accuracy and fairness of the final predictions, compared to the baselines. We also collect crowdsourced labels for the content moderation task to construct a real-world dataset for the evaluation of hybrid machine-human frameworks and show that our proposed learning framework outperforms baselines on this real-world dataset as well.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/16/2022

Forming Effective Human-AI Teams: Building Machine Learning Models that Complement the Capabilities of Multiple Experts

Machine learning (ML) models are increasingly being used in application ...
research
11/17/2017

Predict Responsibly: Increasing Fairness by Learning To Defer

Machine learning systems, which are often used for high-stakes decisions...
research
02/17/2022

Human-Algorithm Collaboration: Achieving Complementarity and Avoiding Unfairness

Much of machine learning research focuses on predictive accuracy: given ...
research
02/09/2022

Designing Closed Human-in-the-loop Deferral Pipelines

In hybrid human-machine deferral frameworks, a classifier can defer unce...
research
04/24/2023

Incorporating Experts' Judgment into Machine Learning Models

Machine learning (ML) models have been quite successful in predicting ou...
research
01/28/2022

Provably Improving Expert Predictions with Conformal Prediction

Automated decision support systems promise to help human experts solve t...
research
08/09/2023

Expert load matters: operating networks at high accuracy and low manual effort

In human-AI collaboration systems for critical applications, in order to...

Please sign up or login with your details

Forgot password? Click here to reset