Innovative machine learning models using routine clinical data offer superior stroke risk prediction in atrial fibrillation, ...
Nguyen Xuan Long, a globally recognized expert in statistical inference and machine learning currently based in the United ...
The rise of AI has brought an avalanche of new terms and slang. Here is a glossary with definitions of some of the most ...
In a recent paper, SFI Complexity Postdoctoral Fellow Yuanzhao Zhang and co-author William Gilpin show that a deceptively ...
ABSTRACT: Determining the causal effect of special education is a critical topic when making educational policy that focuses on student achievement. However, current special education research is ...
This project implements state-of-the-art deep learning models for financial time series forecasting with a focus on uncertainty quantification. The system provides not just point predictions, but ...
Abstract: Conventional neural network-based machine learning algorithms often encounter difficulties in data-limited scenarios or where interpretability is critical. Conversely, Bayesian ...
Tumor Site–Specific Radiation-Induced Lymphocyte Depletion Models After Fractionated Radiotherapy: Considerations of Model Structure From an Aggregate Data Meta-Analysis Lymphocytes play critical ...
ACNE vulgaris (AV) remains one of the most prevalent dermatological conditions, particularly affecting adolescents and young adults. While topical treatments are commonly prescribed for ...
Accurate disaster prediction combined with reliable uncertainty quantification is crucial for timely and effective decision-making in emergency management. However, traditional deep learning methods ...