Real Time Decision Making and Information Extraction Algorithms Models and Applications
Abstract
Real-time decision-making and information extraction have become essential components in various domains, including finance, healthcare, autonomous systems, and industrial IoT, where the ability to act upon incoming data streams instantly is crucial. This paper presents a comprehensive framework for real-time decision-making by integrating adaptive predictive modeling, machine learning, and decision-theoretic approaches designed to operate under stringent time constraints. We propose and examine a suite of algorithms—including online gradient descent, recursive least squares, reinforcement learning, and advanced anomaly detection techniques—that are optimized for immediate data processing and rapid decision output. The integration of predictive models enables systems to learn and adapt continuously, while decision-theoretic models provide robust structures to balance immediate and future rewards effectively.