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Conformalized Super Learner Pack only the essentials: Adaptive dictionary learning for kernel ridge regression Pliable rejection sampling SOC-ICNN: From Polyhedral to Conic Geometry for Learning Convex Surrogate Functions Concave Statistical Utility Maximization Bandits via Influence-Function Gradients The Sample Complexity of Multicalibration Revealing Geography-Driven Signals in Zone-Level Claim Frequency Models: An Empirical Study using Environmental and Visual Predictors Beyond Expected Information Gain: Stable Bayesian Optimal Experimental Design with Integral Probability Metrics and Plug-and-Play Extensions Quotient-Space Diffusion Models There Will Be a Scientific Theory of Deep Learning A Kernel Nonconformity Score for Multivariate Conformal Prediction A single algorithm for both restless and rested rotting bandits Even More Guarantees for Variational Inference in the Presence of Symmetries CLT-Optimal Parameter Error Bounds for Linear System Identification Calibeating Prediction-Powered Inference Refining Covariance Matrix Estimation in Stochastic Gradient Descent Through Bias Reduction Learning to Emulate Chaos: Adversarial Optimal Transport Regularization Differentially Private Model Merging Early Detection of Latent Microstructure Regimes in Limit Order Books Too Sharp, Too Sure: When Calibration Follows Curvature On Bayesian Softmax-Gated Mixture-of-Experts Models Efficient Symbolic Computations for Identifying Causal Effects Decentralized Machine Learning with Centralized Performance Guarantees via Gibbs Algorithms The Origin of Edge of Stability Calibrating conditional risk Cold-Start Forecasting of New Product Life-Cycles via Conditional Diffusion Models Properties and limitations of geometric tempering for gradient flow dynamics Online Survival Analysis: A Bandit Approach under Cox PH Model Rethinking Intrinsic Dimension Estimation in Neural Representations Geometric Layer-wise Approximation Rates for Deep Networks Cover meets Robbins while Betting on Bounded Data: $\ln n$ Regret and Almost Sure $\ln\ln n$ Regret SMART: A Spectral Transfer Approach to Multi-Task Learning On the Stability and Generalization of First-order Bilevel Minimax Optimization Meta Additive Model: Interpretable Sparse Learning With Auto Weighting Decision-Focused Federated Learning Under Heterogeneous Objectives and Constraints Achieving the Kesten-Stigum bound in the non-uniform hypergraph stochastic block model Generalization at the Edge of Stability Phase Transitions in the Fluctuations of Functionals of Random Neural Networks Ultrametric OGP - 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Efficient Algorithms for Learning and Compressing Monophonic Halfspaces in Graphs
Marco Bressan, Victor Chepoi, Emmanuel Esposito, Maximilian Thie · 2025-06-29 · via stat.ML updates on arXiv.org

Abstract notions of convexity over the vertices of a graph, and corresponding notions of halfspaces, have recently gained attention from the machine learning community. In this work we study monophonic halfspaces, a notion of graph halfspaces defined through closure under induced paths. Our main result is a $2$-satisfiability based decomposition theorem, which allows one to represent monophonic halfspaces as a disjoint union of certain vertex subsets. Using this decomposition, we achieve efficient and (nearly) optimal algorithms for various learning problems, such as teaching, active, and online learning. Most notably, we obtain a polynomial-time algorithm for empirical risk minimization. Independently of the decomposition theorem, we obtain an efficient, stable, and proper sample compression scheme. This makes monophonic halfspaces efficiently learnable with proper learners and linear error rate $1/\varepsilon$ in the realizable PAC setting. Our results answer open questions from the literature, and show a stark contrast with geodesic halfspaces, for which most of the said learning problems are NP-hard.