Non Pathological Variability
Non-pathological variability, the inherent fluctuations in data and systems outside of disease or malfunction, is a significant challenge across diverse scientific fields. Current research focuses on quantifying and modeling this variability using techniques like Bayesian methods, deep learning (including transformers and GANs), and various machine learning algorithms to improve prediction accuracy and robustness in applications ranging from medical image analysis to language model evaluation and robotic control. Understanding and mitigating this variability is crucial for improving the reliability and generalizability of models and systems, leading to more accurate diagnoses, more efficient resource allocation, and more robust technological applications.
Papers
On the Variability of AI-based Software Systems Due to Environment Configurations
Musfiqur Rahman, SayedHassan Khatoonabadi, Ahmad Abdellatif, Haya Samaana, Emad Shihab
Heart Rate and its Variability from Short-term ECG Recordings as Biomarkers for Detecting Mild Cognitive Impairment in Indian Population
Anjo Xavier, Sneha Noble, Justin Joseph, Thomas Gregor Issac