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 251260 of 704 papers

TitleStatusHype
Decision-Focused Uncertainty QuantificationCode0
Conformal Generative Modeling with Improved Sample Efficiency through Sequential Greedy Filtering0
What If We Had Used a Different App? Reliable Counterfactual KPI Analysis in Wireless SystemsCode0
End-to-End Conformal Calibration for Optimization Under UncertaintyCode1
Conformal Prediction for Dose-Response Models with Continuous TreatmentsCode0
Posterior Conformal Prediction0
Robust Deep Reinforcement Learning for Volt-VAR Optimization in Active Distribution System under Uncertainty0
Conformal Prediction: A Theoretical Note and Benchmarking Transductive Node Classification in GraphsCode0
Adjusting Regression Models for Conditional Uncertainty CalibrationCode0
Beyond Conformal Predictors: Adaptive Conformal Inference with Confidence Predictors0
Show:102550
← PrevPage 26 of 71Next →

No leaderboard results yet.