The evidentiary problem of AI-generated content is not a disclosure problem. It is anepistemological one. Every major governance framework — the EU AI Act's Article 50, proposedFRE Rule 707, the Take It Down Act, platform watermarking policies — addresses syntheticcontent governance as a labelling problem: if generated content is properly disclosed, tagged, ormarked, downstream harms can be managed. This Article argues that framing is structurallymistaken. The relevant distinction between observed and generated content is not a property thatcan be attached to content after production; it is a classification of epistemic status — specifically, the presence or absence of the constitutive causal connection to observable reality that makescontent capable of anchoring knowledge claims. No label, watermark, or disclosure requirementcan restore what is structurally absent. This Article traces the history of evidentiary authentication through three transitions — physicalartefact, photograph, digital file — demonstrating that each produced an authentication gap thatlaw addressed procedurally rather than formally. The current transition to AI-generated contentrepresents a structural rupture, not merely a further step in the sequence: synthetic content lacksnot a causal chain that can be documented but the causal chain that makes evidence epistemicallysignificant. Five categories of evidentiary failure produced by this rupture are identified andanalysed: identity attribution without observational grounding (the Taylor Swift deepfakes), authority attribution without testimonial grounding (the Biden robocall), harm attribution withoutcausal grounding (the AI-CSAM crisis), authentication without classification infrastructure (the deepfake defense), and authorship attribution without creative grounding (the AI authorshipproblem). The Modulign Standard v3. 0 — a published open specification for Dimensional Address Grammarfor Observable Reality (DAG-OR) — provides the formal infrastructure that closes theclassification deficit. Its VR/·: SYN classification primitive is the first formal epistemic primitivefor synthetic content, encoding the causal deficit at the classification level rather than as metadata. Its Address-Theoretic Non-Accidentality Principle (ATNA) provides the first structuraldissolution of the Gettier problem as applied to observational evidence, guaranteeing that aproperly classified observation cannot be accidentally true. Its confidence threshold architecturemaps emergently onto legal standards of proof. Its EVID append-only ledger constitutes the chainof custody from the moment of classification. A clause-by-clause analysis of Article 50 identifiesfive structural gaps that DAG-OR closes without displacing the regulation. Proposed FRE Rule901 (b) (11) amendment language is provided. A unified four-step implementation frameworkconcludes the Article.
Vincent Gonzalez (Tue,) studied this question.