SOTAVerified

Conformal Prediction

Conformal Prediction is a machine learning framework that provides valid measures of confidence for individual predictions. It offers a principled approach to quantify uncertainty in predictions without assuming any specific distribution for the data. This section features papers that explore various aspects of conformal prediction, including theoretical advancements, algorithmic developments, and applications across different domains.

Papers

Showing 271280 of 704 papers

TitleStatusHype
Disturbance-Adaptive Data-Driven Predictive Control: Trading Comfort Violations for Savings in Building Climate Control0
Distribution free uncertainty quantification in neuroscience-inspired deep operators0
CUPS: Improving Human Pose-Shape Estimators with Conformalized Deep Uncertainty0
Fundus Image-based Visual Acuity Assessment with PAC-GuaranteesCode0
Tube Loss: A Novel Approach for Prediction Interval Estimation and probabilistic forecastingCode0
Are foundation models for computer vision good conformal predictors?0
Safe Adaptive Cruise Control Under Perception Uncertainty: A Deep Ensemble and Conformal Tube Model Predictive Control Approach0
GeoConformal prediction: a model-agnostic framework of measuring the uncertainty of spatial prediction0
An In-Depth Examination of Risk Assessment in Multi-Class Classification Algorithms0
Spatial Conformal Inference through Localized Quantile Regression0
Show:102550
← PrevPage 28 of 71Next →

No leaderboard results yet.