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Oral Sessions
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{{ site.data.conference.short_name }} {{ site.data.conference.year }} Oral Sessions Schedule
All times are UTC.
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and convert to other time zones using online time zones converters such as
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Be aware of the summer time change in Europe on March 27.
(click on session titles to show the list of papers)
Session Title
Time (UTC )
Oral Session 1 | Learning theory / General ML
Denoising and change point localisation in piecewise-constant high-dimensional regression coefficients
Noise Regularizes Over-parameterized Rank One Matrix Recovery, Provably
Survival regression with proper scoring rules and monotonic neural networks
Multivariate Quantile Function Forecaster
08:30 - 09:30
Oral Session 2 | Bayesian methods / Sampling methods
Differentiable Bayesian inference of SDE parameters using a pathwise series expansion of Brownian motion
Nonparametric Relational Models with Superrectangulation
Robust Bayesian Inference for Simulator-based Models via the MMD Posterior Bootstrap
Unifying Importance Based Regularisation Methods for Continual Learning
09:30 - 10:30
Oral Session 3 | Causality / Trustworthy ML
Almost optimal universal lower bound for learning causal DAGs with atomic interventions
Variance Minimization in the Wasserstein Space for Invariant Causal Prediction
On the Assumptions of Synthetic Control Methods
Differentially Private Densest Subgraph
13:00 - 14:00
Oral Session 4 | Bandits / Reinforcement learning
Optimal Rates of (Locally) Differentially Private Heavy-tailed Multi-Armed Bandits
Nonstochastic Bandits and Experts with Arm-Dependent Delays
Towards Agnostic Feature-based Dynamic Pricing: Linear Policies vs Linear Valuation with Unknown Noise
Towards an Understanding of Default Policies in Multitask Policy Optimization
14:00 - 15:00
(click on session titles to show the list of papers)
Session Title
Time (UTC )
Oral Session 5 | Kernels / Optimization / Deep learning
Kernel Robust Smoothing
A Single-Timescale Method for Stochastic Bilevel Optimization
Lifted Primal-Dual Method for Bilinearly Coupled Smooth Minimax Optimization
Generative Models as Distributions of Functions
09:30 - 10:30
Oral Session 6 | Learning theory / Sampling methods
Amortized Rejection Sampling in Universal Probabilistic Programming
Adaptive Importance Sampling meets Mirror Descent : a Bias-variance tradeoff
"Loss as the Inconsistency of a Probabilistic Dependency Graph: Choose your Model, not your Loss Function"
On the Consistency of Max-Margin Losses
10:30 - 11:30
Oral Session 7 | Bayesian methods / Deep learning
"Many processors, little time: MCMC for partitions via optimal transport couplings"
Rapid Convergence of Informed Importance Tempering
Projection Predictive Inference for Generalized Linear and Additive Multilevel Models
Density Ratio Estimation via Infinitesimal Classification
15:00 - 16:00
(click on session titles to show the list of papers)
Session Title
Time (UTC )
Oral Session 8 | Learning theory / Sampling methods
Sampling from Arbitrary Functions via PSD Models
Orbital MCMC
Hardness of Learning a Single Neuron with Adversarial Label Noise
Data-splitting improves statistical performance in overparameterized regimes
07:00 - 08:00
Oral Session 9 | Reinforcement learning / Deep learning
Beta Shapley: a Unified and Noise-reduced Data Valuation Framework for Machine Learning
"Faster Rates, Adaptive Algorithms, and Finite-Time Bounds for Gradient Temporal-Difference Learning"
A general class of surrogate functions for stable and efficient reinforcement learning
A Complete Characterisation of ReLU-Invariant Distributions
08:00 - 09:00
Oral Session 10 | Gaussian processes / Optimization / Online ML
Minimax Optimization: The Case of Convex-Submodular
Doubly Mixed-Effects Gaussian Process Regression
Fast and Scalable Spike and Slab Variable Selection in High-Dimensional Gaussian Processes
Debiasing Samples from Online Learning Using Bootstrap
13:00 - 14:00
Oral Session 11 | Bayesian methods / Sampling methods
Entropy Regularized Optimal Transport Independence Criterion
Two-Sample Test with Kernel Projected Wasserstein Distance
Estimating Functionals of the Out-of-Sample Error Distribution in High-Dimensional Ridge Regression
Heavy-tailed Streaming Statistical Estimation
14:00 - 15:00