Accepted Papers
Poster and Spotlight Instructions
Accepted papers will receive a talk or a poster at the workshop and the abstracts will appear on the ICML website. Authors can elect to link this abstract to a version of their paper hosted elsewhere (e.g. arXiv, or a personal server).
Accepted papers will not have a synchronous virtual presentation option --- however, all authors of accepted papers can send in a 3-5 minute video which we will link to on this website.
Dates:
We will make final notifications of spotlights by June 15.
The camera-ready for spotlight video submission deadline for spotlight talk recordings is July 1, AOE.
If you have a poster, print it and bring it to the conference! Here are the guidelines (size etc.): https://wiki.eventhosts.cc/en/reference/physical-poster-presenter-instructions
Are you unable to attend the conference but would like your hard work to be visible in a physical setting? Do you dislike carrying your poster on the plane? T3 Expo will print and deliver to the workshop. DEADLINE FOR T3 POSTER PRINTING: Friday, June 24. See https://icml.cc/FAQ/PrintPostersOnsite
Accepted Paper Videos
Training Uncertainty-Aware Classifiers with Conformalized Deep Learning by Bat-Sheva Einbinder, Yaniv Romano, Matteo Sesia, and Yanfei Zhou
Approximate Conditional Coverage via Neural Model Approximations by Allen Schmalz and Danielle Rasooly
Conformal Training: Learning Optimal Conformal Classifiers by David Stutz, Ali Taylan Cemgil, Krishnamurthy (Dj) Dvijotham, and Arnaud Doucet
Conformal Off-Policy Prediction in Contextual Bandits by Muhammad Faaiz Taufiq, Jean-Francois Ton, Rob Cornish, Yee Whye Teh, and Arnaud Doucet
Conformalized Survival Analysis with Adaptive Cutoffs by Rina F. Barber, Zhimei Ren, Yu Gui, and Rohan Hore
Simple Regularisation for Uncertainty-Aware Knowledge Distillation by Martin Ferianc and Miguel Rodrigues
Calibrating probabilistic hierarchical forecasts with conformal predictions by Daan Ferdinandusse
Batch-Ensemble Stochastic Neural Networks for Out-of-Distribution Detection by Xiongjie Chen, Yunpeng Li, and Yongxin Yang
Rashomon Capacity - Quantifying Predictive Multiplicity in Probabilistic Classification by Hsiang Hsu and Flavio P. Calmon
Instance-Based Uncertainty Estimation for Gradient-Boosted Regression Trees by Jonathan Brophy and Daniel Lowd
Conformal Credal Self-Supervised Learning by Julian Lienen, Caglar Demir, and Eyke Hüllermeier
Mitigating Neural Network Overconfidence with Logit Normalization by Hongxin Wei, Renchunzi Xie, Hao Cheng, Lei Feng, Bo An, and Yixuan Li
Trascending TRANSCEND: Revisiting Malware Classification in the Presence of Concept Drift by Federico Barbero, Feargus Pendlebury, Fabio Pierazzi, and Lorenzo Cavallero
Valid inferential models for prediction in supervised learning problems, by Leonardo Cella and Ryan Martin
Dropout Prediction Uncertainty Estimation, by Haichao Yu, Zhe Chen, Dong Lin, Gil E. Shamir, and Jie Han
Applying Regression Conformal Prediction with Nearest Neighbors to time series data, by Samya Tajmouati, Bouazza El Wahbi and Dakkon Mohamed
Calibrating probabilistic predictions of quantile regression forests with conformal predictive systems, by Di Wang, Ping Wang, Cong Wang, and Pingping Wang
Adaptive Conformal Predictions for Time Series by Margaux Zaffran, Olivier Féron, Yannig Goude, Julie Josse and Aymeric Dieuleveut
VaR-Control: Bounding the Probability of High-Loss Predictions by Jake Snell, Thomas Zollo and Richard Zemel
Tracking the risk of a deployed model and detecting harmful distribution shifts by Aleksandr Podkopaev and Aaditya Ramdas
T-Cal: An optimal test for the calibration of predictive models by Donghwan Lee, Xinmeng Huang, Hamed Hassani and Edgar Dobriban
Calibration Generalization by Annabelle Carrell, Neil Mallinar, James Lucas and Preetum Nakkiran
Modular Conformal Calibration by Charles Marx, Shengjia Zhou, Willie Neiswanger and Stefano Ermon
Sample-dependent Temperature Scaling for Improved Calibration by Tom Joy, Francesco Pinto, Ser-Nam Lim, Philip Torr and Puneet Dokania
Provably Improving Expert Predictions with Prediction Sets by Eleni Straitouri, Lequn Wang, Nastaran Okati and Manuel Gomez Rodriguez
Conformalized Online Learning: Online Calibration Without a Holdout Set by Shai Feldman, Stephen Bates and Yaniv Romano
Image-to-Image Regression with Distribution-Free Uncertainty Quantification and Applications in Imaging by Amit Kohli, Anastasios Angelopoulos, Stephen Bates, Jitendra Malik, Michael Jordan, Thayer Alshaabi, Srigokul Upadhyayula and Yaniv Romano
Calibration Divergences: Trainable Objectives for Uncertainty-Aware Prediction by Charles Marx and Stefano Ermon
JAW: Predictive Inference under Covariate Shift by Andrew Prinster, Anqi Liu and Suchi Saria
An empirical Bayes approach to class-conditional conformal inference by Tiffany Ding, Anastasios Angelopoulos and Stephen Bates
Confident Sinkhorn Allocation for Pseudo-Labeling by Vu Nguyen, Sachin Farfade and Anton van den Hengel
Predictive Multiplicity in Probabilistic Classification by Jamelle Watson-Daniels, David Parkes and Berk Ustun
Inference for Interpretable Machine Learning: Fast, Model-Agnostic Confidence Intervals for Feature Importance by Luqin Gan, Lili Zheng and Genevera I. Allen
DAUX: a Density-based Approach for Uncertainty eXplanations by Hao Sun, Boris van Breugel, Jonathan Crabbé, Nabeel Seedat and Mihaela van der Schaar
Fairness in the First Stage of Two-Stage Recommender Systems by Lequn Wang and Thorsten Joachims
Revisiting Recalibration by Jonathan Pearce
crepes: a Python Package for Generating Conformal Regressors and Predictive Systems by Henrik Boström
Split Conformal Prediction for Dependent Data by Roberto I. Oliveira, Paulo Orenstein, Thiago Ramos and João Vitor Romano
Reliable Visual Question Answering: Abstain Rather Than Answer Incorrectly by Spencer Whitehead, Suzanne Petryk, Vedaad Shakib, Joseph Gonzalez, Trevor Darrell, Anna Rohrbach and Marcus Rohrbach
Calibrated Multiple-Output Quantile Regression with Representation Learning by Shai Feldman, Stephen Bates and Yaniv Romano
Robust Flow-based Conformal Inference (FCI) with Statistical Guarantee by Youhui Ye, Meimei Liu and Xin Xing
Conformal prediction set for time-series by Chen Xu and Yao Xie
Calibration of Natural Language Understanding Models with Venn--ABERS Predictors by Patrizio Giovannotti
Probabilistic Conformal Prediction Using Conditional Random Samples by Zhendong Wang, Ruijiang Gao, Mingzhang Yin, Mingyuan Zhou and David Blei
Fast Nonlinear Vector Quantile Regression by Aviv A. Rosenberg, Sanketh Vedula, Yaniv Romano and Alex M. Bronstein
Confident Adaptive Language Modeling by Tal Schuster and Adam Fisch
Conformal Prediction Sets with Limited False Positives by Adam Fisch, Tal Schuster, Tommi Jaakkola and Regina Barzilay
Distribution Free Active Learning via Minimal Stochastic Complexity by Shachar Shayovitz and Meir Feder
Conformal prediction with repeated measurements by Yonghoon Lee and Rina Barber
Stable Conformal Prediction Sets by Eugene Ndiaye
Three Applications of Conformal Prediction for Rating Breast Density in Mammography by Charles Lu, Ken Chang, Praveer Singh and Jayashree Kalpathy-Cramer
Dropout Prediction Uncertainty Estimation Using Neuron Activation Strength by Haichao Yu, Zhe Chen, Dong Lin, Gil I. Shamir and Jie Han
Prediction Intervals for Simulation Metamodeling by Henry Lam and Haofeng Zhang
MAPIE: an open-source library for distribution-free uncertainty quantification by Vianney Taquet, Vincent Blot, Thomas Morzadec, Louis Lacombe and Nicolas Brunel
Factor Model of Mixtures and Conformalized Regression by Cheng Peng and Stan Uryasev
Assessment of Prediction Intervals Using Uncertainty Characteristics Curves by Jiri Navratil, Benjamin Elder, Matthew Arnold, Soumya Ghosh and Prasanna Sattigeri
Calibrated and Sharp Uncertainties in Deep Learning via Density Estimation by Volodymyr Kuleshov and Shachi Deshpande
Towards PAC Multi-Object Detection and Tracking by Shuo Li, Sangdon Park, Xiayan Ji, Insup Lee and Osbert Bastani
Practical Adversarial Multivalid Conformal Prediction by Osbert Bastani, Varun Gupta, Christopher Jung, Georgy Noarov, Ramya Ramalingam and Aaron Roth
Disentangling Epistemic and Aleatoric Uncertainty in Reinforcement Learning by Bertrand Charpentier, Ransalu Senanayake, Mykel Kochenderfer and Stephan Günnemann
Bounded Implicit Variational Inference by Anshuk Uppal, Wouter Boomsma and Jes Frellsen
Faster online calibration without randomization: interval forecasts and the power of two choices by Chirag Gupta and Aaditya Ramdas
PAC Prediction Sets for Meta-Learning by Sangdon Park, Edgar Dobriban, Insup Lee and Osbert Bastani
Stock Market Prediction Using Machine Learning by Surya Prakash, Rahul Kumar Gupta and Vikas Srivasatva
Nonparametric Estimation and Conformal Inference of the Sufficient Forecasting With a Diverging Number of Factors by Xiufan Yu, Jiawei Yao and Lingzhou Xue
Clustering of Trajectories using Non-Parametric Conformal DBSCAN Algorithm by Haotian Wang, Jie Gao and Minge Xie
Semantic uncertainty intervals for disentangled latent spaces by Swami Sankaranarayanan, Anastasios Angelopoulos, Stephen Bates, Yaniv Romano and Phillip Isola
Multiple testing framework for Out-of-Distribution detection by Akshayaa Magesh, Venugopal V. Veeravalli, Anirban Roy, and Susmit Jha