Introduced as a notion of algorithmic fairness, multicalibration has proved to be a powerful and versatile concept with implications far beyond its original intent. This stringent notion -- that predictions be well-calibrated across a rich class of intersecting subpopulations -- provides its strong guarantees at a cost: the computational and sample complexity of learning multicalibrated predictors are high, and grow exponentially with the number of class labels. In contrast, the relaxed notion of multiaccuracy can be achieved more efficiently, yet many of the most desirable properties of multicalibration cannot be guaranteed assuming multiaccuracy alone. This tension raises a key question: Can we learn predictors with multicalibration-style...
Few-shot segmentation aims to devise a generalizing model that segments query images from unseen cla...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Critical decisions like loan approvals, foster care placements, and medical interventions are increa...
Fair calibration is a widely desirable fairness criteria in risk prediction contexts. One way to mea...
Implements 'Multi-Calibration Boosting' (2018) and 'Multi-Accuracy Boosting' (2019) for the multi-...
In safety-critical applications a probabilistic model is usually required to be calibrated, i.e., to...
We consider the broad framework of supervised learning, where one gets examples of objects together ...
We introduce a framework for calibrating machine learning models so that their predictions satisfy e...
A multiclass classifier is said to be top-label calibrated if the reported probability for the predi...
<p>The binary classification accuracy, estimated with cross validation is plotted for each condition...
Over the past few years many proofs of the existence of calibration have been discovered. Each of th...
Learning from label proportions (LLP) is a weakly supervised classification problem where data point...
Recently, it has been observed that a transfer learning solution might be all we need to solve many ...
This paper develops novel conformal prediction methods for classification tasks that can automatical...
Multivariate calibration uses an estimated relationship between a multivariate response Y (of dimens...
Few-shot segmentation aims to devise a generalizing model that segments query images from unseen cla...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Critical decisions like loan approvals, foster care placements, and medical interventions are increa...
Fair calibration is a widely desirable fairness criteria in risk prediction contexts. One way to mea...
Implements 'Multi-Calibration Boosting' (2018) and 'Multi-Accuracy Boosting' (2019) for the multi-...
In safety-critical applications a probabilistic model is usually required to be calibrated, i.e., to...
We consider the broad framework of supervised learning, where one gets examples of objects together ...
We introduce a framework for calibrating machine learning models so that their predictions satisfy e...
A multiclass classifier is said to be top-label calibrated if the reported probability for the predi...
<p>The binary classification accuracy, estimated with cross validation is plotted for each condition...
Over the past few years many proofs of the existence of calibration have been discovered. Each of th...
Learning from label proportions (LLP) is a weakly supervised classification problem where data point...
Recently, it has been observed that a transfer learning solution might be all we need to solve many ...
This paper develops novel conformal prediction methods for classification tasks that can automatical...
Multivariate calibration uses an estimated relationship between a multivariate response Y (of dimens...
Few-shot segmentation aims to devise a generalizing model that segments query images from unseen cla...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Critical decisions like loan approvals, foster care placements, and medical interventions are increa...