Nov 23, 2025

Economic Finality for Attested Journalism: Multi-Dimensional Trust for Misinformation Resistance

Publius Dirac, Anantha Shakthi Ganeshan Thevar

Modern journalism faces coordinated AI-generated misinformation campaigns powered by botnet-driven Sybil attacks, where attackers cheaply create thousands of fake journalist accounts. We present TrustNet, a decentralized trust framework applying Bitcoin-style finality (economic, cryptographic, and social) to journalism identity and reputation. Unlike centralized rating systems, TrustNet models trust as a multi-dimensional vector with at least four independent cost layers: (1) real-world identity verification through Aqua Protocol email/phone number/bank KYC ownership proofs (e.g. from theguardian.com); (2) peer-to-peer vouching via Ethereum-wallet-signed messages; (3) temporal proof-of-age preventing overnight account creation; and (4) graph-based transitive trust using EigenTrust algorithms, isolating bot clusters even when they vouch for each other. This transforms attack costs from near-zero to >$100,000 of staking plus real-world identity and years of reputation. Our implementation combines cryptographic primitives (EIP-191), data provenance (C2PA/Aqua), and decentralized reputation (PGP-style Web of Trust). Our network analysis demonstrates isolated bot clusters receive near-zero transitive trust scores while legitimate journalists maintain high multi-dimensional trust vectors, providing transparent, auditable journalism without centralized gatekeepers.

Live Demo: https://rht.github.io/apart_attested_journalism/

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Cite this work

@misc {

title={

(HckPrj) Economic Finality for Attested Journalism: Multi-Dimensional Trust for Misinformation Resistance

},

author={

Publius Dirac, Anantha Shakthi Ganeshan Thevar

},

date={

11/23/25

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
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