Functional trustworthiness of AI systems by statistically valid testing
Bernhard Nessler, Thomas Doms, Sepp Hochreiter

TL;DR
This paper emphasizes the importance of statistically valid testing for assessing the functional trustworthiness of AI systems, critiquing current EU standards and proposing a rigorous assessment framework.
Contribution
It introduces a comprehensive framework for functional trustworthiness based on statistical testing, domain definition, and performance requirements, advocating for mandatory, reliable assessments.
Findings
Statistically valid testing is essential for AI trustworthiness.
Current standards underestimate the importance of functional guarantees.
A three-element framework ensures reliable AI assessment.
Abstract
The authors are concerned about the safety, health, and rights of the European citizens due to inadequate measures and procedures required by the current draft of the EU Artificial Intelligence (AI) Act for the conformity assessment of AI systems. We observe that not only the current draft of the EU AI Act, but also the accompanying standardization efforts in CEN/CENELEC, have resorted to the position that real functional guarantees of AI systems supposedly would be unrealistic and too complex anyways. Yet enacting a conformity assessment procedure that creates the false illusion of trust in insufficiently assessed AI systems is at best naive and at worst grossly negligent. The EU AI Act thus misses the point of ensuring quality by functional trustworthiness and correctly attributing responsibilities. The trustworthiness of an AI decision system lies first and foremost in the correct…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI) · Artificial Intelligence in Healthcare and Education
