Risk Assessment
Risk assessment, aiming to quantify and manage potential hazards across diverse domains, is undergoing a transformation driven by advancements in artificial intelligence. Current research emphasizes the development of automated risk assessment systems using machine learning models like convolutional neural networks, long short-term memory networks, transformers, and Bayesian networks, often incorporating data from multiple sources (e.g., text, images, sensor data) for improved accuracy and real-time capabilities. These improvements have significant implications for various sectors, including healthcare (suicide detection, disease risk prediction), autonomous systems (driving safety, robot reliability), and infrastructure management (predictive maintenance, disaster risk reduction), enabling more proactive and data-driven decision-making. Furthermore, research is actively addressing challenges related to bias mitigation, uncertainty quantification, and the responsible use of AI in risk assessment.
Papers
Advancements In Heart Disease Prediction: A Machine Learning Approach For Early Detection And Risk Assessment
Balaji Shesharao Ingole, Vishnu Ramineni, Nikhil Bangad, Koushik Kumar Ganeeb, Priyankkumar Patel
Risk Assessment for Autonomous Landing in Urban Environments using Semantic Segmentation
Jesús Alejandro Loera-Ponce, Diego A. Mercado-Ravell, Israel Becerra-Durán, Luis Manuel Valentin-Coronado
A Knowledge-Informed Large Language Model Framework for U.S. Nuclear Power Plant Shutdown Initiating Event Classification for Probabilistic Risk Assessment
Min Xian, Tao Wang, Sai Zhang, Fei Xu, Zhegang Ma
PsyGUARD: An Automated System for Suicide Detection and Risk Assessment in Psychological Counseling
Huachuan Qiu, Lizhi Ma, Zhenzhong Lan