Quantifying the data uncertainty in learning tasks is often done by learning a prediction interval or prediction set of the label given the input. Two commonly desired properties for learned prediction sets are \emph{valid coverage} and \emph{good efficiency} (such as low length or low cardinality). Conformal prediction is a powerful technique for learning prediction sets with valid coverage, yet by default its conformalization step only learns a single parameter, and does not optimize the efficiency over more expressive function classes. In this paper, we propose a generalization of conformal prediction to multiple learnable parameters, by considering the constrained empirical risk minimization (ERM) problem of finding the most efficient...
There are many types of statistical inferences that can be used today: Frequentist, Bayesian, Fiduci...
Conformal Prediction is a machine learning methodology that produces valid prediction regions under ...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...
Conformal prediction uses past experience to determine precise levels ofconfidence in new prediction...
Safe deployment of deep neural networks in high-stake real-world applications require theoretically ...
Deep Learning predictions with measurable confidence are increasingly desirable for real-world probl...
Conformal prediction (CP) is a wrapper around traditional machine learning models, giving coverage g...
Many applications of machine learning methods involve an iterative protocol in which data are collec...
Conformal prediction is a statistical-learning framework that complements predictions with a reliabl...
Conformal prediction is a learning framework that produces models that associate with each of their ...
The Conformal Prediction framework guarantees error calibration in the online setting, but its pract...
One of the challenges with predictive modeling is how to quantify the reliability of the models' pre...
This paper develops novel conformal prediction methods for classification tasks that can automatical...
Conformal prediction is a learning framework that produces models that associate witheach of their p...
There are many types of statistical inferences that can be used today: Frequentist, Bayesian, Fiduci...
Conformal Prediction is a machine learning methodology that produces valid prediction regions under ...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...
Conformal prediction uses past experience to determine precise levels ofconfidence in new prediction...
Safe deployment of deep neural networks in high-stake real-world applications require theoretically ...
Deep Learning predictions with measurable confidence are increasingly desirable for real-world probl...
Conformal prediction (CP) is a wrapper around traditional machine learning models, giving coverage g...
Many applications of machine learning methods involve an iterative protocol in which data are collec...
Conformal prediction is a statistical-learning framework that complements predictions with a reliabl...
Conformal prediction is a learning framework that produces models that associate with each of their ...
The Conformal Prediction framework guarantees error calibration in the online setting, but its pract...
One of the challenges with predictive modeling is how to quantify the reliability of the models' pre...
This paper develops novel conformal prediction methods for classification tasks that can automatical...
Conformal prediction is a learning framework that produces models that associate witheach of their p...
There are many types of statistical inferences that can be used today: Frequentist, Bayesian, Fiduci...
Conformal Prediction is a machine learning methodology that produces valid prediction regions under ...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...