Abstract
Reliable forecasts are critical in high-risk application areas, including healthcare, finance, and autonomous systems. In these critical applications, this research investigates the application of optimized ensemble techniques to minimize model uncertainties. To address such issues, we describe an approach that integrates multiple learning models to enhance real-time data processing performance and overcome the computational hurdles imposed by such methods. Using real-time working examples to generate simulation reports, we see how ensemble methods can help build more accurate predictions. Additionally, this paper presents typical issues in high-stake prediction scenarios and provides actionable advice on tactfully resolving them by model fine-tuning and uncertainty minimization. The findings, therefore, stress the necessity of applying effective AI solutions to increase the reliability of advanced decisions, thus enhancing performance in extended application domains.
Published Version
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