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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
Calibrated Physics-Informed Uncertainty Quantification0
Distribution-Free Guarantees for Systems with Decision-Dependent Noise0
Distribution-free uncertainty quantification for classification under label shift0
Disturbance-Adaptive Data-Driven Predictive Control: Trading Comfort Violations for Savings in Building Climate Control0
Conformalized Decision Risk Assessment0
Adaptive Conformal Inference by Betting0
Conformalized Credal Regions for Classification with Ambiguous Ground Truth0
Conformalized Answer Set Prediction for Knowledge Graph Embedding0
Detecting Adversarial Examples in Learning-Enabled Cyber-Physical Systems using Variational Autoencoder for Regression0
Coverage-Guaranteed Prediction Sets for Out-of-Distribution Data0
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