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Evaluating Trustworthiness in AI: Risks, Metrics, and Applications Across Industries

38
Citations
July 4, 2025
Published Date

Research Abstract & Technology Focus

Ensuring the trustworthiness of artificial intelligence (AI) systems is critical as they become increasingly integrated into domains like healthcare, finance, and public administration. This paper explores frameworks and metrics for evaluating AI trustworthiness, focusing on key principles such as fairness, transparency, privacy, and security. This study is guided by two central questions: how can trust in AI systems be systematically measured across the AI lifecycle, and what are the trade-offs involved when optimizing for different trustworthiness dimensions? By examining frameworks such as the NIST AI Risk Management Framework (AI RMF), the AI Trust Framework and Maturity Model (AI-TMM), and ISO/IEC standards, this study bridges theoretical insights with practical applications. We identify major risks across the AI lifecycle stages and outline various metrics to address challenges in system reliability, bias mitigation, and model explainability. This study includes a comparative analysis of existing standards and their application across industries to illustrate their effectiveness. Real-world case studies, including applications in healthcare, financial services, and autonomous systems, demonstrate approaches to applying trust metrics. The findings reveal that achieving trustworthiness involves navigating trade-offs between competing metrics, such as fairness versus efficiency or privacy versus transparency, and emphasizes the importance of interdisciplinary collaboration for robust AI governance. Emerging trends suggest the need for adaptive frameworks for AI trustworthiness that evolve alongside advancements in AI technologies. This paper contributes to the field by proposing a comprehensive review of existing frameworks with guidelines for building resilient, ethical, and transparent AI systems, ensuring their alignment with regulatory requirements and societal expectations.
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What is the core focus of the research titled 'Evaluating Trustworthiness in AI: Risks, Metrics, and Applications Across Industries'?

This literature focuses on: Ensuring the trustworthiness of artificial intelligence (AI) systems is critical as they become increasingly integrated into domains like healthcare, finance, and public administration. This paper explores frameworks and metrics for evaluating AI ...

Are there open-source GitHub repositories related to Evaluating Trustworthiness in AI: Risks, Metrics, and Applications Across Industries?

Yes, open-source projects like future-agi/future-agi (Open-source, end-to-end platform for evaluating, observing, and improving LLM and AI agent applications. Tracing · Evals · Simulations · Datasets ·...) are actively building upon these concepts.

What other academic literature is closely related to 'Evaluating Trustworthiness in AI: Risks, Metrics, and Applications Across Industries'?

Yes, highly correlated activity was mapped. An entry titled 'Developing trustworthy artificial intelligence: insights from research on interpersonal, human-automation, and human-AI trust' discusses this: The rapid advancement of artificial intelligence (AI) has impacted society in many aspects. Alongside this progress, concerns such as privacy viola...

Are there commercial applications of 'Evaluating Trustworthiness in AI: Risks, Metrics, and Applications Across Industries' in market news publications?

Yes, highly correlated activity was mapped. An entry titled 'Human–computer Interaction' discusses this: Social media and AI platforms are facing severe legal and ethical scrutiny regarding their impact on human cognition and design negligence. Safety ...

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