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Exploring Innovative Metrics to Benchmark and Ensure Robustness in AI Systems
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Author(s): Manoj Kuppam (Medline Industries Inc., USA), Madhavi Godbole (Apolisrises Inc., USA), Tirupathi Rao Bammidi (Mphasis Corp., USA), S. Suman Rajest (Dhaanish Ahmed College of Engineering, India)and R. Regin (SRM Instıtute of Science and Technology, India)
Copyright: 2024
Pages: 17
Source title:
Explainable AI Applications for Human Behavior Analysis
Source Author(s)/Editor(s): P. Paramasivan (Dhaanish Ahmed College of Engineering, India), S. Suman Rajest (Dhaanish Ahmed College of Engineering, India), Karthikeyan Chinnusamy (Veritas, USA), R. Regin (SRM Institute of Science and Technology, India)and Ferdin Joe John Joseph (Thai-Nichi Institute of Technology, Thailand)
DOI: 10.4018/979-8-3693-1355-8.ch001
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Abstract
In an era where AI systems are increasingly integrated into critical applications, ensuring their robustness and reliability is of paramount importance. This study embarks on a comprehensive exploration of innovative metrics aimed at benchmarking and ensuring the robustness of AI systems. Through extensive research and experimentation, the authors introduce a set of groundbreaking metrics that demonstrate superior performance across diverse AI applications and scenarios. These metrics challenge existing benchmarks and set a new gold standard for the AI community to aspire towards. Robustness and reliability are cornerstones of trustworthy AI systems. Traditional metrics often fall short in assessing the real-world performance and robustness of AI models. To address this gap, this research team has developed a suite of novel metrics that capture nuanced aspects of AI system behavior. These metrics evaluate not only accuracy but also adaptability, resilience to adversarial attacks, and fairness in decision-making. By doing so, the authors provide a more comprehensive view of an AI system's capabilities. This study's significance lies in its potential to drive the AI community towards higher standards of performance and reliability. By adopting these innovative metrics, researchers, developers, and stakeholders can better assess and compare the robustness of AI systems. This, in turn, will lead to the development of more dependable AI solutions across various domains, including healthcare, finance, autonomous vehicles, and more. This research represents a significant step forward in ensuring the robustness and reliability of AI systems. The introduction of innovative metrics challenges the status quo and sets a new performance standard for AI systems, ultimately contributing to the creation of more trustworthy and dependable AI technologies.
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