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Layer · 01 Narrative Similarity
58
Layer · 02 Behavioral Synchronization
71
Layer · 03 Cognitive Crowding
64
Layer · 04 Reflexive Amplification
55
Layer · 05 Adaptive Survivability
62
§ A — Introduction

A risk model for cognitive markets.

The Ergonitive Risk Index (ERI) is an experimental cognitive-risk framework designed to estimate the degree of convergence inside AI-driven financial ecosystems.

Rather than measuring traditional financial stress alone — volatility, leverage, liquidity, credit spread — ERI attempts to model cognitive synchronization, narrative compression, behavioral clustering, and adaptive fragility between autonomous systems.

It does not replace conventional risk infrastructure. It extends it, by adding a measurement layer beneath the financial one.

§ B — Core Hypothesis

As artificial cognition increasingly participates in financial decision-making, market instability may progressively emerge not only from volatility, but from excessive cognitive convergence.

§ C — Architecture

The Five Layers of ERI.

The index is composed of five interdependent measurement layers. Each operates on a different signal, but contributes to the same composite reading. Together they form a probabilistic estimate of cognitive fragility — not a prediction, but a state.

Layer · 01 01 NARRATIVE LAYER

Narrative Similarity

Measure semantic convergence between AI-generated market narratives.

LLM-generated analyses, social-financial narratives, AI-generated trading commentary, and autonomous research outputs are vectorized and compared through semantic similarity models.

Increasing similarity across narratives suggests growing cognitive compression — the same story, told by an expanding number of architectures, with diminishing variance.

Inputs
AI-generated commentaryNews embeddingsReddit / X / Discord sentimentLLM outputsRetail AI promptsAnalyst narrative clustering
Possible metrics
Cosine similarityEmbedding convergenceNarrative entropy reductionSemantic density clustering
Fig. 01.a semantic clustering
Layer · 02 02 BEHAVIORAL LAYER

Behavioral Synchronization

Measure simultaneous reactions between autonomous systems.

The system analyzes synchronized order flow, correlated execution behavior, simultaneous momentum reactions, and clustered market participation patterns.

The objective is to estimate the degree of collective behavioral alignment — how tightly autonomous architectures move together when faced with the same stimulus.

Inputs
Options flowUnusual volumeMomentum clusteringETF crowdingIntraday execution timingCorrelated AI trading behavior
Possible metrics
Cross-correlation matricesBehavioral clusteringReaction-latency synchronizationFlow concentration metrics
Fig. 02.a flow alignment
Layer · 03 03 POSITIONING LAYER

Cognitive Crowding

Estimate concentration risk inside AI-driven market positioning.

The framework evaluates how concentrated autonomous systems become around identical assets, sectors, themes, narratives, or probabilistic expectations.

Cognitive crowding extends the classical notion of a crowded trade. The danger is no longer similar positions alone — it is similar reasoning architectures generating similar positions for similar reasons simultaneously.

Inputs
Sector concentrationAI-related ETF exposureOptions crowdingThematic saturationCorrelated institutional positioning
Possible metrics
Position-concentration indicesNarrative saturationThematic correlation densityFlow asymmetry scores
Fig. 03.a crowding topography
Layer · 04 04 REFLEXIVE LAYER

Reflexive Amplification

Detect self-reinforcing AI feedback loops.

As autonomous systems react to the outputs of other autonomous systems, feedback loops may progressively amplify volatility, narratives, and synchronized behavior.

ERI models these recursive dynamics through probabilistic reflexive simulations — measuring how quickly a small signal can propagate, mutate, and return to the system that emitted it.

Inputs
AI-generated news propagationSentiment accelerationMomentum amplificationRecursive signal reinforcementVolatility acceleration
Possible metrics
Reflexivity coefficientsRecursive amplification ratiosVolatility propagation speedNarrative acceleration curves
AI MKT SIG
Fig. 04.a feedback geometry
Layer · 05 05 ERGODIC LAYER

Adaptive Survivability

Estimate the long-term robustness of cognitive market systems.

Inspired by ergodic theory, this layer evaluates whether autonomous systems remain adaptive, diversified, probabilistically survivable, and resistant to destructive convergence across time.

It treats interpretative diversity not as a residual property but as the central stabilizing variable of cognitive economies — the population property that determines whether the system survives its own intelligence.

Inputs
Monte Carlo survivabilityKelly efficiencyRegime-switch resilienceDiversity preservationAdaptive trajectory persistence
Possible metrics
Long-term growth survivabilityAdaptive persistence ratiosFragility accumulationRegime survivability probability
Fig. 05.a survival path 0042
§ D — Output Model

The composite reading, scored.

The five layer scores are normalized and combined into a single composite reading from 0 to 100. The score is mapped to one of five interpretive bands, each describing a qualitatively different state of the cognitive ecosystem.

0 — 20 Healthy cognitive diversity
20 — 40 Moderate convergence
40 — 60 Narrative compression risk
60 — 80 Cognitive crowding zone
80 — 100 Reflexive fragility risk
§ E — On What ERI Is Not

Not a prediction engine.

ERI does not attempt to predict market direction.

It attempts to estimate the structural cognitive fragility of autonomous financial ecosystems.

A high reading does not imply that markets will fall. It implies that the population of architectures driving them has lost interpretative diversity — and that whatever happens next will happen synchronously.

§ F — Conceptual Shift

Traditional finance measures volatility.
Ergonitive finance attempts to measure cognitive convergence.

§ G — Methodological Note

The Ergonitive Risk Index is not designed as a deterministic prediction engine.

It is an experimental framework exploring how artificial cognition, behavioral synchronization, and adaptive fragility may reshape future financial systems. Its components are stated as research hypotheses, not as confirmed instruments.

Its purpose, today, is to make a previously invisible property of markets — interpretative diversity — visible enough to be argued about.

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§ Colophon

© 2026 Emmanuel Touraine / Institute for Ergonitive Intelligence. All rights reserved.

This technical brief is part of the research publication series of the Institute for Ergonitive Intelligence. It accompanies Manifesto 11 — The Ergonitive Risk Index.

No part of this text, concept, framework, visual system, diagrams, terminology, or related intellectual structure may be reproduced, copied, distributed, modified, trained on, or commercially exploited without prior written permission.

The content is provided for independent research, theoretical exploration, and educational purposes only. This publication does not constitute financial, investment, trading, legal, or tax advice.

Author Emmanuel Touraine
Published for IFEI — Institute for Ergonitive Intelligence www.ergonitive.org contact@ergonitive.org
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Toward a new science of adaptive cognitive systems.

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Working papers circulated by invitation.
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