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Learning-to-Defer in Non-Stationary Time Series via Switching State-Space Models Variance Reduction for Expectations with Diffusion Teachers TASTE: A Designer-Annotated Multi-Dimensional Preference Dataset for AI-Generated Graphic Design Everywhere Valid Bounds on False Discovery Proportions in Conformal Inference Decision-Path Patterns as Tree Reliability Signals: Path-based Adaptive Weighting for Random Forest Classification The General Theory of Localization Methods CASCADE Conformal Prediction: Uncertainty-Adaptive Prediction Intervals for Two-Stage Clinical Decision Support Symmetrization of Loss Functions for Robust Training of Neural Networks in the Presence of Noisy Labels Tail Annealing for Heavy-Tailed Flow Matching Variance-Reduced Manifold Sampling via Polynomial-Maximization Density Estimation Latent Laplace Diffusion for Irregular Multivariate Time Series Precision Physical Activity Prescription via Reinforcement Learning for Functional Actions Reducing Diffusion Model Memorization with Higher Order Langevin Dynamics Provably Data-driven Lagrangian Relaxation for Mixed Integer Linear Programming Can Adaptive Gradient Methods Converge under Heavy-Tailed Noise? 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Complete version Beyond Augmented-Action Surrogates for Multi-Expert Learning-to-Defer Probabilistic NDVI Forecasting from Sparse Satellite Time Series and Weather Covariates Feature Learning Dynamics in Infinite-Depth Neural Networks Statistically-Guided Meta-Learning for Cross-Deployment Activity Recognition in Distributed Fiber-Optic Sensing Branching Flows: Discrete, Continuous, and Manifold Flow Matching with Splits and Deletions Adversarial Robustness in One-Stage Learning-to-Defer Neural ARFIMA model for forecasting BRIC exchange rates with long memory Neural Stochastic Differential Equations on Compact State Spaces: Theory, Methods, and Application to Suicide Risk Modeling BOOST: A Data-Driven Framework for the Automated Joint Selection of Kernel and Acquisition Functions in Bayesian Optimization Random Walk Learning and the Pac-Man Attack Random Matrix Theory for Deep Learning: Beyond Eigenvalues of Linear Models GradPower: Powering Gradients for Faster Language Model Pre-Training CT-OT Flow: Estimating Continuous-Time Dynamics from Discrete Temporal Snapshots Post-Training Augmentation Invariance Optimizing LLM Inference: Fluid-Guided Online Scheduling with Memory Constraints Ensemble RL through Classifier Models: Enhancing Risk-Return Trade-offs in Trading Strategies Program Evaluation with Remotely Sensed Outcomes Dataset-Driven Channel Masks in Transformers for Multivariate Time Series Optimal Query Allocation in Extractive QA with LLMs: A Learning-to-Defer Framework with Theoretical Guarantees
Gradient-Flow Optimization as Dynamic Random-Effects Inference: Testing and Early Stopping with Applications to Deep Learning
Minhao Yao, Ruoyu Wang, Xihong Lin, Lin Liu, Zhonghua Liu · 2026-05-27 · via stat updates on arXiv.org

Gradient-flow optimization is usually viewed as an algorithmic procedure for minimizing empirical loss, with training duration selected by validation or heuristic early-stopping rules. We develop a statistical inference framework for the gradient-flow training trajectory itself. The central object is fixed-operator squared-error gradient flow: whenever the fitted value evolves through a time-invariant positive semidefinite training operator, the trained model output at each training time is exactly equivalent to the best linear unbiased predictor, or empirical-Bayes posterior mean, under a corresponding random-effects model. Under this representation, training time becomes a variance-component parameter governing how variance is reallocated from residual noise to structured signal. This turns two basic training decisions into inferential problems. First, whether training is needed is formulated as a variance-component test for signal beyond initialization. Second, how long to train is formulated as restricted maximum likelihood (REML) estimation of the training-time variance component. The resulting REML-guided early stopping rule has a spectral interpretation: it selects the training time at which optimized spectral losses become empirically decorrelated from the eigenvalues of the training operator, yielding an effective degrees-of-freedom measure for the evolving trained model. We establish asymptotic prediction optimality for fixed-design in-sample risk and, under additional kernel regularity conditions, random-design out-of-sample risk. Deep learning models in fixed-kernel gradient regimes provide canonical modern-AI instantiations of the theory. Numerical experiments and a UK Biobank proteomics application show that the proposed inferential approach attains competitive prediction accuracy while reducing the reliance on validation splits and repeated checkpoint evaluation.