Authority Confidence Rating (ACR) and Authority Confidence Deficit (ACD): A Cryptographic Standard for Real-Time AI Decision Authorization Verification and AI Liability Quantification
Description
This paper establishes two new certification standards for AI governance and introduces a complete framework for AI Liability Quantification (ALQ). The Authority Confidence Rating (ACR) is a cryptographic standard for quantifying AI decision authorization in real time. The Authority Confidence Deficit (ACD) is a derived liability variable enabling insurers to price AI liability from cryptographic enforcement data. ACR Certification provides a four-tier classification (Platinum, Gold, Silver, Unrated). ACR-Zero Certification provides a structural designation where unauthorized execution is eliminated. The paper describes how ACR and ACD are computed natively across the Y.I.N. Mazari Architecture: a 44-layer system organized into nine tiers spanning from physics foundation through certification output, including 38 governance layers, 4 hardware enforcement layers (YIN KEYSTONE, 520 claims), and 2 certification output layers. A complete 44-layer architecture table is provided. The Y.I.N. Mazari Architecture is currently the only architecture spanning all 44 layers and the only architecture qualifying for ACR-Zero Certification. The complete architecture is protected by 40 USPTO patent applications comprising 4,300+ claims with priority date November 23, 2025. Four application domains are identified: insurance underwriting, regulatory compliance under the EU AI Act and Product Liability Directive 2024/2853, defense operations including real-time mission authorization monitoring, and enterprise AI procurement. This paper extends the ACR standard published as a companion record (DOI: 10.5281/zenodo.19361421). Implementation using cryptographic authority enforcement may require licensing from the inventor. Licensing inquiries: ilyesmazari@hotmail.com
Notes (English)
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ACR_ACD_ALQ_44_FINAL 1.pdf
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Related works
- Is supplement to
- Preprint: 10.5281/zenodo.19361421 (DOI)