UMKC Announces New Master of Science in Artificial Intelligence
UMKC announces a new Master of Science in Artificial Intelligence program aimed at addressing workforce demand for AI expertise, set to l...
Data analysis, statistics, and data engineering
UMKC announces a new Master of Science in Artificial Intelligence program aimed at addressing workforce demand for AI expertise, set to l...
MIT Professor Rafael Gómez-Bombarelli discusses the transformative potential of AI in scientific research, emphasizing its role in materi...
Abstract page for arXiv paper 2512.24420: Virasoro Symmetry in Neural Network Field Theories
The paper presents MBD-ML, a machine learning model that predicts many-body dispersion interactions in molecules and materials, enhancing...
This paper discusses the coarsening bias introduced by discretizing continuous variables in causal functionals, proposing a bias-reduced ...
The paper presents a novel chaotic quantum diffusion model for learning quantum data distributions, offering a more efficient and robust ...
This article presents a Genetic Algorithm framework for optimizing outpatient appointment scheduling in healthcare, demonstrating signifi...
The paper presents CGFedRec, a novel framework for federated recommendation that enhances collaboration by using cluster-guided item alig...
This article explores the role of 'comeback researchers'—those who return to academia after a hiatus—in bridging knowledge gaps and enhan...
This paper explores scalable kernel-based distances for statistical inference, focusing on the maximum mean discrepancy (MMD) and introdu...
The paper presents StrassenNet, a neural architecture that learns fast matrix multiplication algorithms, specifically reproducing the Str...
The paper presents Dynamic Hybrid Parallelism (DHP), a new strategy for efficiently scaling the training of Multimodal Large Language Mod...
The RAMSeS framework enhances time-series anomaly detection by combining a stacking ensemble with adaptive model selection, optimizing pe...
The paper presents Persona4Rec, a novel recommendation framework that utilizes offline reasoning with large language models (LLMs) to cre...
This paper presents novel methods for evaluating contributions in federated learning while ensuring privacy and robustness, addressing vu...
This paper presents a novel approach to image reconstruction using spatially adaptive sparsity level maps within convolutional dictionari...
This article revisits the Bertrand Paradox using a theoretical framework that incorporates no-regret learning strategies in a discrete pr...
This article presents a new goodness-of-fit test for latent class models applied to ordinal categorical data, addressing the challenge of...
This paper explores the estimation of asymmetric community numbers in multi-layer directed networks, introducing a novel goodness-of-fit ...
This paper presents the MAESTRO framework, which utilizes multi-agent large language models to discover high-performance single atom cata...
The paper presents Fair Model-based Clustering (FMC), a new algorithm that enhances fairness in clustering by ensuring the proportion of ...
This article provides a comprehensive guide on empirical risk minimization (ERM), detailing high-probability regret bounds and modular pr...
The paper presents a novel approach to global sequential testing for auditing machine learning systems across multiple data streams, enha...
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