Structured Matrix Scaling for Multi-Class Calibration

This paper proposes a structured matrix scaling approach for multi-class calibration that leverages theoretical insights from logistic regression, combined with structured regularization and robust optimization, to effectively manage the bias-variance tradeoff and achieve substantial performance gains over existing methods while providing an open-source implementation.

Eugène Berta, David Holzmüller, Michael I. Jordan, Francis Bach2026-03-11🤖 cs.AI

An Interpretable Operator-Learning Model for Electric Field Profile Reconstruction in Discharges Based on the EFISH Method

This paper introduces Decoder-DeepONet (DDON), a novel interpretable operator-learning model that significantly outperforms previous neural network and classical methods in reconstructing electric field profiles from EFISH signals by offering superior accuracy, generalizability, and robustness to incomplete data while identifying optimal sampling windows.

Zhijian Yang, Edwin Setiadi Sugeng, Mhedine Alicherif, Tat Loon Chng2026-03-11🤖 cs.LG

Enhancing Retrieval-Augmented Generation with Entity Linking for Educational Platforms

This paper introduces ELERAG, an enhanced Retrieval-Augmented Generation system that integrates Wikidata-based Entity Linking and a hybrid re-ranking strategy to significantly improve factual accuracy in Italian educational question-answering, particularly outperforming standard methods in domain-specific contexts while demonstrating the importance of domain-adapted strategies.

Francesco Granata, Francesco Poggi, Misael Mongiovì2026-03-11🤖 cs.AI

SA2^{2}GFM: Enhancing Robust Graph Foundation Models with Structure-Aware Semantic Augmentation

This paper introduces SA2^{2}GFM, a robust Graph Foundation Model framework that enhances domain-adaptive representations and generalization by integrating structure-aware semantic augmentation, an information bottleneck mechanism, and expert adaptive routing to effectively mitigate domain noise, structural perturbations, and adversarial attacks.

Junhua Shi, Qingyun Sun, Haonan Yuan, Xingcheng Fu2026-03-11🤖 cs.LG

ADHint: Adaptive Hints with Difficulty Priors for Reinforcement Learning

ADHint is a novel reinforcement learning framework that enhances reasoning capabilities and generalization by integrating sample difficulty priors to adaptively schedule hint ratios and employing consistency-based gradient modulation with rollout difficulty posteriors to stabilize learning and prevent destructive imitation.

Feng Zhang, Zezhong Tan, Xinhong Ma, Ziqiang Dong, Xi Leng, Jianfei Zhao, Xin Sun, Yang Yang2026-03-11🤖 cs.LG

Do Spatial Descriptors Improve Multi-DoF Finger Movement Decoding from HD sEMG?

This study demonstrates that while the multichannel linear descriptors-based block field method (MLD-BFM) achieves the highest accuracy in decoding five finger-joint degrees of freedom from HD sEMG, its performance is not statistically superior to conventional time-domain features, though it significantly outperforms dimensionality reduction methods, highlighting the critical importance of preserving spatial resolution in high-density recordings.

Ricardo Gonçalves Molinari, Leonardo Abdala Elias2026-03-11🤖 cs.LG

EMFusion: Conditional Diffusion Framework for Trustworthy Frequency Selective EMF Forecasting in Wireless Networks

This paper introduces EMFusion, a conditional multivariate diffusion-based framework that leverages a residual U-Net with cross-attention and imputation-based sampling to provide accurate, uncertainty-quantified, frequency-selective electromagnetic field forecasts for wireless network planning, significantly outperforming existing baseline models.

Zijiang Yan, Yixiang Huang, Jianhua Pei, Hina Tabassum, Luca Chiaraviglio2026-03-11🤖 cs.AI

Enhancing Reconstruction Capability of Wavelet Transform Amorphous Radial Distribution Function via Machine Learning Assisted Parameter Tuning

This study introduces the enhanced WT-RDF+ framework, which leverages machine learning-assisted parameter tuning to overcome amplitude accuracy limitations in reconstructing Radial Distribution Functions for amorphous Ge-Se and Ag-Ge-Se systems, thereby outperforming standard ML benchmarks even with limited training data.

Deriyan Senjaya, Stephen Ekaputra Limantoro2026-03-11🔬 cond-mat.mtrl-sci

Automating Forecasting Question Generation and Resolution for AI Evaluation

This paper presents an automated system using LLM-powered web research agents to generate and resolve diverse, real-world forecasting questions at scale, demonstrating high-quality question creation and resolution rates that surpass human-curated platforms while effectively evaluating and improving AI forecasting performance.

Nikos I. Bosse, Peter Mühlbacher, Jack Wildman, Lawrence Phillips, Dan Schwarz2026-03-11🤖 cs.AI

Bottleneck Transformer-Based Approach for Improved Automatic STOI Score Prediction

This paper proposes a novel bottleneck transformer architecture that integrates convolutional blocks for frame-level feature extraction and multi-head self-attention for information aggregation to achieve improved non-intrusive prediction of the Short-Time Objective Intelligibility (STOI) metric, outperforming state-of-the-art self-supervised learning models in both seen and unseen scenarios.

Amartyaveer, Murali Kadambi, Chandra Mohan Sharma, Anupam Mondal, Prasanta Kumar Ghosh2026-03-11🤖 cs.LG