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...
Google's new offline-first dictation app uses Gemma AI models to take on the apps like Wispr Flow.
This article reviews the top 10 AI certifications and courses for 2026, highlighting their significance in a rapidly evolving field and t...
This paper explores representation collapse in neural machine translation models, particularly focusing on the Transformer architecture a...
The paper introduces Moment Guided Diffusion (MGD), a novel method for generating maximum entropy distributions by guiding moments toward...
The paper explores anti-causal domain generalization, proposing methods to leverage unlabeled data for robust predictive modeling in vary...
The paper explores the effectiveness of Graph Neural Networks (GNNs) in semi-supervised learning, providing theoretical insights and empi...
This paper presents a streamlined spectral algorithm for community detection in the stochastic block model, achieving improved error boun...
The paper presents LiveGraph, a novel neural re-ranking framework aimed at improving exercise recommendations by addressing student engag...
The paper presents PRIMO, a supervised latent-variable model that addresses the challenges of incomplete multimodal data by quantifying t...
The paper presents BrainRVQ, a high-fidelity EEG foundation model that utilizes Dual-Domain Residual Quantization and Hierarchical Autore...
The paper presents the Poisson-MNL model for dynamic joint assortment and pricing, addressing customer arrival dependencies to optimize r...
This paper presents a simplified transformer architecture tailored for small longitudinal cohort data, enhancing predictive performance w...
This article presents a study on the multi-objective optimization of deep learning interatomic potentials, focusing on the trade-off betw...
This study explores the impact of football formations on match outcomes using Double Machine Learning, questioning the effectiveness of d...
The paper presents U-FedTomAtt, an ultra-lightweight federated learning framework designed for tomato disease recognition, optimizing per...
This paper explores substantive fairness in conformal prediction, analyzing its impact on downstream decision-making and proposing method...
The paper presents SEMAS, a self-evolving multi-agent network designed for predictive maintenance in Industrial IoT, enhancing real-time ...
This article explores the use of MALDI-TOF mass spectrometry and antimicrobial resistance patterns as cost-effective alternatives to whol...
This paper introduces One-Shot Incremental Federated Learning (OSI-FL), a novel framework that mitigates catastrophic forgetting and comm...
This paper presents KD-UFSL, a method to enhance privacy in federated split learning by minimizing data leakage through intermediate repr...
This article explores the geometric relationships between independently trained multimodal contrastive models, revealing that an orthogon...
This paper explores weight regularization techniques in low-rank continual learning, proposing EWC-LoRA to mitigate task interference whi...
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