AIDBDCMay 11

Autonomous FAIR Digital Objects: From Passive Assertions to Active Knowledge

arXiv:2605.1037025.7
Predicted impact top 80% in AI · last 90 daysOriginality Highly original
AI Analysis

For the scientific community, this offers a path toward decentralized, self-sustaining knowledge curation that can outlive publishing institutions, addressing the problem of registry closure.

The authors propose Autonomous FAIR Digital Objects (aFDOs) that enable scientific assertions to autonomously validate evidence, reconcile contradictions, and update confidence, addressing the fragility of centralized curation. Their consensus mechanism resolves 56.3% of 3,914 naturally occurring ClinVar conflicts and degrades gracefully under attacks within a Byzantine-tolerance bound (f < n/5).

Scientific knowledge on the Web is published as passive assertions and cannot decide when to validate evidence, reconcile contradictions, or update confidence as findings accumulate. Curation depends on centralised middleware and institutional continuity, but when registries close, active stewardship stops even when data remain online. We advance the concept of Autonomous FAIR Digital Objects (aFDOs) from an abstract idea to an operational model, to offer a route from passive scientific publication toward accountable, standards-aligned automation that can outlive its publishing institutions. aFDO augments FDOs with three capabilities anchored in Semantic Web standards, namely 1) a policy layer over RDF-star aligned with PROV-O, SHACL, and ODRL for portable condition-action rules, 2) an announcement layer over ActivityStreams 2.0 that bounds per-announcement evaluation cost, and 3) an agreement layer that resolves multi-source contradictions through reputation and confidence weighted agreement under a bounded adversarial model. We provide a formal definition that distinguishes policy specifications, event handlers, and communication interfaces. We evaluate an open reference implementation on 4,305 FDOs grounded in rare-disease ontologies, namely ClinVar, HPO, and Orphanet, combined with controlled synthetic observations. The consensus mechanism resolves 56.3% of 3,914 naturally occurring ClinVar conflicts where multiple submitters disagree and an expert panel has subsequently adjudicated. Under Sybil, collusion, and poisoning attacks, the mechanism degrades gracefully within its design Byzantine-tolerance bound (f < n/5), and fails as predicted beyond that bound.

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