stat.ME
33 papers tagged stat.ME β re-sort below
Papers
- Recursive Modified Pattern Search on High-dimensional Simplex : A Blackbox Optimization Technique (2026)Priyam Dasβ
- Theory of the GMM Kernel (2016)Ping Li and Cun-Hui Zhangβ
- Geometry-Aware Maximum Likelihood Estimation of Intrinsic Dimension (2019)Marina Gomtsyan et al.β
- Distributed Adaptive Nearest Neighbor Classifier: Algorithm and Theory (2023)Ruiqi Liu et al.β
- Certified Causal Defense with Generalizable Robustness (2026)Yiran Qiao et al.β
- Re-examining Granger Causality with Causal Bayesian Networks and Reichenbachs Principles (2026)S. A. Adedayoβ
- Causal Additive Models with Unobserved Causal Paths and Backdoor Paths (2026)Thong Pham et al.β
- Position: Stop Chasing the C-index when Evaluating Survival Analysis Models (2026)Christian Marius Lillelund et al.β
- Vecchia-Inducing-Points Full-Scale Approximations for Gaussian Processes (2026)Tim Gyger et al.β
- SADA: Safe and Adaptive Aggregation of Multiple Black-Box Predictions in Semi-Supervised Learning (2026)Jiawei Shan et al.β
- SpeedCP: Fast Kernel-based Conditional Conformal Prediction (2026)Yating Liu et al.β
- One-shot Conditional Sampling: MMD meets Nearest Neighbors (2026)Anirban Chatterjee et al.β
- Beyond Accuracy: Are Time Series Foundation Models Well-Calibrated? (2026)Coen Adler et al.β
- Bayesian model selection and misspecification testing in imaging inverse problems only from noisy and partial measurements (2026)Tom Sprunck et al.β
- Online monotone density estimation and log-optimal calibration (2026)Rohan Hore et al.β
- Estimating Continuous Treatment Effects with Two-Stage Kernel Ridge Regression (2026)Seok-Jin Kim et al.β
- Variance-Reduced Manifold Sampling via Polynomial-Maximization Density Estimation (2026)Serhii Zabolotniiβ
- Diffusion-based Denoising Beats Vanilla Score Matching in Parameter Estimation: A Theoretical Explanation (2026)Benedikt L\"utke Schwienhorst et al.β
- LLM Sparsity Prior for Robust Feature Selection (2026)Caleb Skinner et al.β
- Operationalizing Individual Fairness via Gradient Descent and Bradley-Terry Models (2026)Conlan Olson et al.β
- Spiking the training data to correct for test set contamination (2026)Johnny Tian-Zheng Wei et al.β
- Learning Treatment Effects during Resource Allocation via Priority-Queue Randomization (2026)JungHo Lee et al.β
- Different Statistical Perspectives for Understanding Generalisation in Graph Neural Networks (2026)Nil Ayday et al.β
- Geometry Adaptive Counterfactual Distribution Learning with Diffusion-Guided Smoothing (2026)Kwangho Kimβ
- Statistical Inference for Stochastic Gradient Descent Beyond Finite Variance (2026)Jose Blanchet et al.β
- Beyond Differences: Doubly Robust Meta-Learners for Ratio-Based Treatment Effects (2026)Michael Fuchs et al.β
- Function-Valued Causal Influence in Nonlinear Time Series (2026)Valentina V. Kuskova et al.β
- Confounder Detection via Treatment Intent: A New Observational Study Design (2026)Drago Plecko et al.β
- Structure-Adaptive Conformal Inference for Large-Scale Out-of-Distribution Testing (2026)Rongyi Sun et al.β
- Causal Representation Learning for Generalisable Recommendation (2026)Yorgos Felekis et al.β
- Towards Continuous-time Causal Foundation Models (2026)Dennis Thumm et al.β
- The Good, the Bad, and the Ugly of Markov Boundary for Tabular Prediction (2026)Shu Wan et al.β
- Leave a Window Out: Modifying the Jackknife for Predictive Inference in Time Series (2026)Hanyang Jiang et al.β