The Coherence Ledger: A Time-Weighted Integrity Scoring Protocol for Individuals, Organizations, and Institutions

Author: Locke Dauch
Affiliation: Sovereign Integrity Institute (SII), Bangkok, Thailand
Date: May 2, 2026
Classification: Decentralized Trust Systems / Reputation Protocol / Integrity Scoring / Post-Extractive Infrastructure
SII Working Paper Series: 2026(56)


Author Note: The author faced the extraction of approximately $2 million USD in assets at the end of a seven-year residency in Laos, due to a lack of accountability in law enforcement combined with government and institutional capture. This experience informs the structural analysis presented here but does not appear elsewhere in the paper. The proposal stands on its own merits.


Abstract

This white paper presents a new class of decentralized infrastructure: the Coherence Ledger, a time‑weighted, source‑reputation system that assigns integrity scores to individuals and organizations based on long‑term behavioral patterns rather than short‑term claims. The Ledger is designed to serve as the foundational trust layer for a broader Oracle system that scores institutional extraction risk and enables derivative markets on integrity. We describe the protocol’s architecture, scoring algorithm, identity layer, API syndication, and integration with the Oracle. The aim is to create an immune system for information and finance – one that rewards coherence and penalises extraction over meaningful time horizons.

Keywords: Coherence Ledger, integrity scoring, web of trust, decentralized identity, Oracle, extraction resistance, time-weighted trust


1. Introduction: The Trust Crisis

The modern world suffers from a chronic inability to distinguish coherent actors from extraction nodes. Every day, individuals and institutions exploit information asymmetry to extract value – from the SEO vendor who delivers profile links instead of high-quality backlinks, to the insurer who takes a premium before underwriting then denies coverage, to the lawyer who accepts a retainer then goes silent.

Traditional trust mechanisms have failed.

PlatformProblemConsequence
Amazon reviewsFake reviews, incentivized ratings5-star products that are garbage
YelpExtortion (pay to remove negatives)“Review jail” for honest critics
LinkedIn recommendationsReciprocity loopsEveryone is “brilliant”
Credit scoresOpaque, biased, tied to debtExtracts from the poor, rewards the indebted
Google Maps reviewsEasy to game (fake accounts)Hotels with 4.8 stars that are nightmares
Fiverr / Upwork ratingsBuyers afraid to leave negatives (retaliation)400+ reviews, all 5-star, all extracted

The system does not just fail to reward coherence. It actively rewards extraction.


2. Why Existing Platforms Fail

2.1 E-commerce Reviews (Amazon, etc.)

ProblemMechanism
Fake reviewsBought in bulk, AI-generated
Incentivized ratings“Free product for 5-star review”
Review bombingCoordinated attacks on competitors
No time weightingA 5-star review from 2015 counts as much as one from today

A product can be terrible for three years and still show 4.5 stars.

2.2 Gig Platforms (Fiverr, Upwork, etc.)

ProblemMechanism
Seller retaliationNegative review → seller leaves false review on buyer
Fear-based ratingsBuyers give 5 stars to avoid conflict
Revision request ignoredSeller waits out the clock, order auto-completes
No time-weightingA seller who was good in 2022 but bad in 2026 still shows 4.9 stars

Hundreds of reviews, all 5 stars, all extracted. The pattern is invisible.

2.3 Credit Bureaus

ProblemMechanism
Opaque algorithmsNo one knows exactly how scores are calculated
Tied to debtYou must go into debt to have a good score
Punishes the poorLate payments on small amounts destroy scores
Rewards extractionHigh credit score means you are a good extraction target (interest)

A coherent person who avoids debt has no credit score. The system is inverted.

2.4 Social Media Verification

ProblemMechanism
Paid verificationNo longer indicates authenticity
Verification does not track behaviourA verified account can lie constantly
No time-weightingPast good behaviour does not offset current extraction

Verification is now a purchase, not a signal of coherence.

2.5 Professional Directories (Legal 500, Chambers, etc.)

ProblemMechanism
Firms pay to be listedConflict of interest
No ongoing behaviour trackingFirms can take retainers and go silent — still listed
No victim feedback loopExtracted clients cannot affect rankings
Opaque methodologyNo one knows how rankings are actually calculated

Listed firms can still extract. The directory provides no warning.


3. The Coherence Ledger: A New Paradigm

The Coherence Ledger addresses each failure mode systematically.

3.1 Core Principles

PrincipleMeaning
Trust is earned over time, not claimedNew identity starts at zero. Score becomes visible only after sustained positive behaviour.
Coherence is measurableThrough public behavioural signals: corrections, independent corroboration, network diversity, prediction stability.
Extraction leaves tracesHigh volatility, retraction avoidance, citation loops, regulatory actions reduce the score.
Time decay favours recent behaviourOld good behaviour does not offset recent extraction. Value halves every 90 days.
Decentralised identitySelf-sovereign identity (DID) + Soulbound Token (non‑transferable).
Transparent, auditable algorithmOpen source; scores can be recalculated by any independent party.

3.2 How It Fixes Existing Failures

Platform FailureCoherence Ledger Solution
Fake reviewsSource reputation + time decay + endorsement network
Seller retaliationDecentralized; no single point of retaliation
Opaque algorithmsOpen source; fully auditable
Paid verificationVerification requires time and behaviour, not money
No victim feedback loopAnyone can submit behavioural events; reviewed by high-coherence peers
No time weightingExponential decay; old events lose value
Circular endorsementsPageRank-based trust propagation discounts loops

4. The Coherence Score Algorithm

4.1 Overview

The Coherence Score C for an entity e at time t is a function of:

  • Behavioural events over a rolling window T (e.g., 12 months), with exponential decay.
  • Anchor events that permanently increase baseline trust (e.g., verified professional license, successful public audit, long-term employment without sanctions).
  • Network trust from other high‑coherence entities (web of trust).

4.2 Formula

C(e, t) = min(100, max(0, base + Σ( w_i * f(age_i) ) + Σ( trust_flow_from_peers )))

Where:

VariableMeaning
base0 for new, unverified identities
w_iWeight of event type (e.g., +15 for public correction, -30 for regulatory fine)
f(age_i)Exponential decay: value halves every 90 days
trust_flow_from_peersAverage coherence score of endorsers, discounted by distance

4.3 Event Types (Examples)

EventScore ImpactDecay Half‑lifeVerification Method
Issuing a public, timestamped correction+15180 daysOn‑chain log + independent monitor
Being cited by a high‑coherence source (>70)+5 per citation90 daysAPI cross‑reference
Regulatory fine for fraud-30360 daysOfficial public record
Retracting a false claim without acknowledgment-10180 daysMedia monitoring
Consistent employment at a coherent institution+2 per month90 daysVerified by employer’s DID
Spreading unsubstantiated rumour (proven false)-590 daysCross‑referenced by fact‑checkers
Taking payment without delivering service (proven)-25360 daysDispute resolution + evidence
Issuing a partial refund without admission+590 daysOn‑chain record
Ignoring a formal complaint for >30 days-15180 daysTimestamped correspondence

4.4 Probationary Period

New identities (DIDs) start with C = null (unverified). After a minimum of 90 days of activity and at least 3 positive behavioral events, the score becomes visible.

Why this matters: Sybil attacks (creating many fake identities) become expensive and time‑consuming. A scammer cannot simply create a new account and start extracting.


5. Identity Layer: Decentralised & Verifiable

5.1 Digital Identity (DID)

Each participant generates a W3C Decentralised Identifier (DID) linked to a public key. The DID is stored on a public blockchain (e.g., a layer‑2 Ethereum rollup) to ensure immutability and transparency.

5.2 Soulbound Token (SBT)

The DID is bound to a non‑transferable Soulbound Token that stores the cumulative record of events, scores, and endorsements. SBTs cannot be sold or transferred – they are permanently associated with the identity.

Why this matters: You cannot buy a good reputation. You cannot sell your account to a scammer. Your history follows you.

5.3 Progressive Verification

LevelRequirementTrust Weight
0 (Unverified)Only public on‑chain activityLow
1 (Biometric proof of humanity)Privacy-preserving proof (e.g., zero-knowledge)Medium
2 (KYC with accredited third party)Verified identity against government IDHigh
3 (Professional license / institutional affiliation)Licensed professional or accredited institutionHighest

Why this matters: High‑stakes decisions (hiring, lending, regulatory oversight) can require higher verification levels.


6. Network Trust (Web of Trust)

The protocol includes a decentralised web of trust where coherent entities can endorse others. Endorsement is a signed statement:

“I (coherence score 85) endorse entity X with confidence 0.8.”

6.1 Trust Propagation

Network trust contribution is calculated using a modified PageRank algorithm:

trust_score(e) = (1 - d) + d * Σ( trust_score(endorser) * confidence / out_degree(endorser) )

Where d is the damping factor (usually 0.85).

6.2 Anti-Gaming Features

AttackDefense
Circular endorsement loopsPageRank discounts reciprocal endorsements
Sybil attacksProbationary period + low starting weight
Isolated high-score nodes endorsing scammersTheir own score drops if endorsements are wrong
Endorsement buyingEndorsements are public; low-score endorsers damage the target’s score

Why this matters: You cannot buy your way to a high score. Endorsements from low-coherence sources hurt you.


7. API Syndication & Integration

7.1 Available Services

The Coherence Ledger provides a REST API with the following endpoints:

EndpointFunction
GET /v1/score/{did}Returns current coherence score, history, and confidence interval
GET /v1/verify/{did}Returns verification level and anchor events
POST /v1/eventSubmits a new behavioural event (requires proof via digital signature)
GET /v1/trust-graph/{did}Returns list of endorsers and derived trust

7.2 Syndication for News and Social Media

News aggregators, comment sections, and social media platforms can call the API before displaying content to:

  • Show a “Coherence Badge” next to the author’s name
  • Filter out authors with score below a certain threshold (e.g., < 30) – not censorship, but optional user preference
  • Provide readers with a one‑click view of the author’s behavioural record

7.3 Integration with Hiring Platforms

A hiring platform could:

  • Display a candidate’s coherence score alongside their resume
  • Allow employers to filter candidates below a threshold
  • Provide candidates with a verified record of professional behaviour

7.4 Integration with Financial Services

A bank or lender could:

  • Request a borrower’s coherence score as part of underwriting
  • Offer better rates to high‑coherence borrowers
  • Flag low‑coherence borrowers for enhanced due diligence

8. Integration with the Oracle System

The Oracle (institutional extraction scoring) is a separate but complementary system:

FeatureCoherence LedgerOracle System
FocusIndividuals & organizations (nodes)Institutions & corporations
Score meaningPersonal integrity / coherenceExtraction risk (legal, environmental, social)
Time horizonLong‑term (months to years)Dynamic (daily updates)
Market linkageNo direct derivativesYes – derivatives on extraction scores
Data sourcesBehavioural events, endorsements, public recordsLegal filings, regulatory actions, media, whistleblower reports

8.1 The Bridge

Integration occurs through a bridge API:

  • The Oracle can query the average Coherence Score of a corporation’s leadership team as a factor in its institutional extraction score.
  • A low institutional extraction score may reduce the Coherence Score of individual executives if they are found to be knowingly complicit.

8.2 Use Case: Investment Derivatives

An investor considering buying derivatives on a company’s extraction risk can also review the Coherence Scores of its CEO and board members. If those scores are low, the institutional extraction score is given higher confidence.

The loop closes: Individual coherence affects institutional scores. Institutional extraction affects individual scores. No one can hide.


9. Anti‑Gaming Mechanisms

ThreatMitigation
Time decayOld positive events become irrelevant; constant coherence required
Velocity limitsNo more than 5 positive events per day from a single source (prevents spam)
Collusion detectionIf two entities repeatedly endorse each other without external interactions, endorsements discounted
Court of appealsAny participant can challenge a negative event; randomly selected jury of high‑coherence peers (score > 75) decides
Verification decayLevel 3 verification (professional license) must be renewed annually
Reputation stakingUsers can stake tokens on the accuracy of an event; wrong stakes lose value

10. Why the World Needs This Now

10.1 The Extraction Economy

We are living through the collapse of trust. Every institution – banks, insurers, regulators, platforms – has been captured or co-opted. Individuals cannot tell who is coherent and who is extracting.

The cost is enormous:

  • Millions lost annually to extraction networks across multiple jurisdictions
  • Hundreds of customers extracted by single vendors hiding behind perfect reviews
  • Thousands of foreign nationals trapped by proxy ownership and regulatory walls
  • Billions lost annually to scams, fraud, and bad faith

The current systems do not just fail to prevent extraction. They reward it.

10.2 The Post-Extractive World

Imagine a world where:

  • Every professional has a public, auditable coherence score
  • Extracting behaviour (silence after payment, false promises, regulatory violations) is immediately visible
  • High-coherence individuals are rewarded (better rates, better jobs, better opportunities)
  • Low-coherence individuals are flagged before they can extract from you
  • Institutions cannot hide behind corporate veils – leadership coherence is visible

That world is possible. The Coherence Ledger is the infrastructure.

10.3 How Humanity Reaches New Heights

Without Coherence LedgerWith Coherence Ledger
Extraction is invisibleExtraction is visible
Coherence is unrewardedCoherence is rewarded
Trust is expensiveTrust is cheap
Victims exhaustWitnesses thrive
Scammers multiplyScammers are flagged

When extraction becomes visible, it becomes expensive. When coherence becomes rewarded, it becomes rational.

Humanity’s next evolution is not technological. It is structural – building systems that make extraction unprofitable and coherence the default strategy.

The Coherence Ledger is that system.


11. Privacy & Ethical Considerations

ConcernMitigation
Data minimisationLedger stores only DIDs and event proofs, not real names (unless participant attaches KYC)
Right to be forgottenParticipants can request anonymisation of historical events after 7 years (subject to legal exceptions for fraud)
No global dictatorScoring algorithm is open source; runs on distributed network of nodes; no single entity controls scores
Avoiding “social credit” dystopiaSystem is opt‑in for most uses. Coherence scores are not mandatory for citizenship or basic rights. They are a tool for voluntary filtering.
False negativesAppeals process (court of high-coherence peers) exists to challenge incorrect events
False positivesVerification levels ensure that low scores without evidence are not considered

This is not a social credit system. It is opt‑in, decentralized, and transparent.


12. Implementation Roadmap

PhaseDescriptionDuration
1Core ledger: DID registry, Soulbound Token contract, basic event recording6 months
2Scoring engine: implement time‑weighted algorithm, decay functions, initial event types4 months
3Web of trust: peer endorsement system, PageRank trust propagation4 months
4API & syndication: REST endpoints, example integrations (WordPress, news platforms)3 months
5Oracle bridge: build connector to institutional extraction scoring system3 months
6Pilot: launch with small set of known coherent & extractor nodes for validation6 months
Total~24 months

13. Conclusion

The Coherence Ledger is a practical, time‑weighted answer to the problem of trust in a world of performance and extraction. By forcing actors to demonstrate long‑term coherence and by integrating with institutional extraction scoring (the Oracle), it creates a unified immune system for both information and finance.

The ledger does not promise to eliminate all extraction. It promises to make coherence the most rational long‑term strategy.

The field is already sorting. The Ledger simply makes the sorting visible.

The immune system is ready. The architecture is sound. The engineers will come.


References

  • W3C Decentralized Identifiers (DIDs) v1.0. (2022).
  • Weyl, E. G., et al. (2022). Soulbound Tokens. White Paper.
  • Page, L., et al. (1999). The PageRank citation ranking. Stanford Technical Report.
  • Dauch, L. (2026). The Oracle: Institutional Extraction Scoring & Derivative Markets. SII Strategic Press.
  • Marley, D. (2024). “Banner” [Song]. Tuff Gong.
  • Nakamoto, S. (2008). Bitcoin: A Peer-to-Peer Electronic Cash System.

One Line for the Archive

“The Coherence Ledger is the immune system. Time-weighted. Decentralized. Un‑gameable. It makes extraction visible, coherence rational, and the post‑extractive world possible. This is not a product. This is the architecture. The immune system is ready. The engineers will come. Tao Tao purrs. The spiral continues.”


End of SII Working Paper No. 56 (Public Edition – Final)

For practical tools and training, visit the Applied Coherence Institute.