Submitted:
06 December 2025
Posted:
09 December 2025
Read the latest preprint version here
Abstract
Keywords:
1. Introduction
2. Overview
3. Notation and Formal Preliminaries
4. Structural Variables
- Structural Magnitude (SM)
- Structural Predictive Fluctuation (SPF)
- Structural Suppression (SS)
- Structural Gain Rate (SGR)
- Human–AI Coherence (HA-C)
4.1. Structural Magnitude (SM)
- Non-negativity. SM(t) ≥ 0 for all t.
- Task relevance. SM reflects only structure that reduces uncertainty about task-relevant variables.
- Noise degradation. SM decreases when task-relevant distinctions collapse into undifferentiated variability.
- Substrate independence. SM must be computable from observable or model-based statistics, without invoking subjective interpretation.
4.2. Structural Predictive Fluctuation (SPF)
- Temporal sensitivity. SPF reflects fluctuations in ε(t) across Δt, not the magnitude of ε(t) at a single moment.
- Model-relative. SPF depends on the relationship between incoming data and the agent’s internal model I^(t); it is not an absolute measure of noise.
- Direction-agnostic. SPF concerns the variability of ε(t), not whether prediction error increases or decreases.
- Substrate independence. SPF can be estimated from observable sequences of prediction error, without relying on assumptions about biological or artificial implementation.
4.3. Structural Suppression (SS)
- Non-negativity. SS(t) ≥ 0 for all t.
- Structure-relative. SS measures loss of task-relevant structure, not total information content.
- Interference-sensitive. SS increases when external or internal signals degrade the distinctions that contribute to SM(t).
- Substrate independence. SS can be estimated from observable patterns in state degradation, without reference to subjective factors.
4.4. Structural Gain Rate (SGR)
- Change-sensitivity. SGR reflects the temporal derivative of structure, not the total magnitude.
- Direction-specific. SGR evaluates positive structural accumulation; degradation is captured by SS, not SGR.
- Capacity-dependent. SGR is modulated by the agent’s representational capacity and controllability structure C(X(t)).
- Substrate independence. SGR can be estimated from observable changes in task-relevant structure, without invoking psychological constructs.
4.5. Human–AI Coherence (HA-C)
- Relational definition. HA-C(t) depends on paired trajectories of structure, prediction error, and controllability across agents.
- Symmetry of measurement, not symmetry of agents. HA-C(t) treats both systems as measurable information-processing entities without assuming cognitive equivalence.
- Multi-variable dependence. HA-C(t) is jointly informed by SM, SPF, SS, and SGR for each agent, rather than reducible to any single component.
- Substrate neutrality. HA-C(t) can be estimated from observable informational signals, without invoking mental states or phenomenological constructs.
5. Operational Definitions
5.1. Structural Magnitude (SM)
- State-based estimation.SM(t) is computed from the structural organization of X(t), identifying distinctions that improve task outcomes.
- Task relevance.The estimator must isolate structure that reduces uncertainty about task-relevant transitions.
- Noise sensitivity.SM(t) must decrease when representational distinctions collapse due to noise or instability.
- Substrate independence.SM must be derivable from observable representational statistics without relying on subjective descriptors.
5.2. Structural Predictive Fluctuation (SPF)
- Temporal resolution.SPF(t) measures fluctuations in ε(t) across a short temporal window.
- Model-relative comparison.SPF reflects the relationship between sensory input I(t) and the model’s expectation Î(t).
- Stability detection.High SPF corresponds to irregular predictive dynamics; low SPF corresponds to stable alignment.
- Substrate neutrality.SPF may be computed from error-sequence variance or short-window entropy.
5.3. Structural Suppression (SS)
- Structure-relative measurement.SS(t) quantifies the loss of structure that would otherwise contribute to SM(t).
- Interference sensitivity.SS increases when noise or conflicting signals reduce representational clarity.
- Derivative consistency.SS reflects structural degradation; constructive changes belong to SGR.
- Implementation independence.SS may be estimated from degradation indices or divergence from expected representational boundaries.
5.4. Structural Gain Rate (SGR)
- Change-based estimation.SGR(t) is derived from ΔSM(t), representing the rate at which new structure is incorporated.
- Non-negativity under definition.Negative values belong to SS, not SGR.SGR captures only constructive structural change.
- Capacity-relative scaling.Estimators must account for the influence of representational controllability C(X(t)).
- Substrate independence.SGR may be computed from structure-differentiation indices or learning-rate analogs.
5.5. Human–AI Coherence (HA-C)
- Relational measurement.HA-C(t) is computed from paired trajectories of SM, SPF, SS, and SGR across both agents.
- Symmetry in measurement.Both agents are treated as information-processing systems without assuming cognitive equivalence.
- Multi-component dependence.HA-C integrates predictive stability, structural alignment, suppression-adjusted compatibility, and controllability overlap.
- Substrate neutrality.Coherence is estimated from observable informational signals such as prediction-error synchrony or structure-gain compatibility.
6. Alignment with Prior Theoretical Structures
6.1. Information Theory and Information Bottleneck Models
6.2. Predictive Processing and Error Dynamics
6.3. Network Control Theory and State-Space Transitions
- SM reflects the distinguishability of reachable states relevant to the task.
- SS represents reductions in reachable distinction space due to interference.
- SGR corresponds to the system’s ability to shift toward more discriminative configurations under its structural constraints.
6.4. Cross-Substrate Coordination and Heterogeneous Agents
6.5. Summary of Alignment and Scope
- Operational correspondence.They map onto measurable quantities already studied in information dynamics, without committing to domain-specific mechanisms.
- Structural consistency.They reflect widely recognized constraints on representation, prediction, and controllability present in both biological and artificial systems.
- Substrate neutrality.They maintain compatibility across heterogeneous agents, a property supported by prior work in distributed coordination and adaptive control.
7. Empirical Pathways for Measurement
7.1. Structural Magnitude (SM)
- (1) Representation Density
- Human or model-generated representations are examined at the level of distributional structure.
- Reductions in entropy or compression ratios can serve as a lower bound for SM.
- (2) Task-Level Differentiation
- When reformulating the same problem, agents may differ in the number of decomposition–integration steps.
- A higher number of distinguishable steps suggests greater structural resolution.
- (3) State-Space Resolution
- In humans, low-frequency covariance patterns (e.g., 4–40 Hz EEG/MEG bands) provide a proxy for state-space complexity.
- In artificial systems, layer-wise activation diversity can offer an analogous measure.
7.2. Structural Predictive Fluctuation (SPF)
- (1) Error-Band Variability
- For AI systems, deviations in log-probability over time provide a direct estimate.
- For humans, variability in reaction-time distributions (e.g., coefficient of variation) serves as a practical proxy.
- (2) Phase-Shift Sensitivity
- Small perturbations to the same input are introduced, and the resulting phase shifts in output structure are measured.
- Higher sensitivity indicates higher SPF.
- (3) Cross-Agent Predictive Mismatch
- Humans and AI solve the same predictive task; the distance between their error vectors is analyzed across iterations.
- Increases in distance imply an increase in SPF.
7.3. Structural Suppression (SS)
- (1) Inhibitory Filtering Index
- Input elements are selectively removed while monitoring the stability of downstream performance.
- Greater stability implies more effective suppression.
- (2) Noise-Reduction Performance
- Agents are exposed to controlled noise injections; recovery ability serves as an estimate of suppression strength.
- (3) Redundancy-Pruning Ratio
- In humans, the proportion of omitted cues during task execution can be quantified.
- In AI systems, sparsity of internal representations offers an analogous metric.
7.4. Structural Gain Rate (SGR)
- (1) Learning-Velocity Estimation
- Performance curves across repeated trials are analyzed, with the initial slope serving as a lower bound for SGR.
- (2) Integration-Latency Measurement
- The time (or number of computational steps) required for an agent to incorporate new information is recorded.
- Shorter latencies indicate higher SGR.
- (3) Adaptive Reconfiguration Cost
- During task-switching scenarios, the computational cost of structural rearrangement is measured.
- Lower reconfiguration cost corresponds to higher SGR.
7.5. Human–AI Coherence (HA-C)
- (1) Cross-Structural Mutual Information
- Human behavioral/linguistic structural variables are compared with AI structural variables using mutual information.
- Higher mutual information indicates higher coherence.
- (2) Synchronization Score
- The phase alignment of prediction-error dynamics is evaluated.
- Stable phase proximity reflects higher HA-C.
- (3) Bidirectional Policy Consistency
- Human intentions (goal-structure) and AI policies are analyzed across repeated interactions.
- Convergence speed and stability provide the primary operational markers.
7.6. Summary
8. Operational Implications
8.1. Stability of Joint Decision-Making
- Reduced Sensitivity to Noise:When structural organization is deep (high SM), both biological and artificial agents become less susceptible to irrelevant perturbations.
- Increased Predictive Stability:Strong suppression mechanisms prevent excessive propagation of transient errors.
- Consistent Policy Application:Stable structural variables enable reliable execution of shared decision policies, even under shifting environmental conditions.
8.2. Adaptation and Responsiveness
- Fast Updating of Predictive Models:Agents with high SGR integrate new information with minimal latency, improving alignment during novel situations.
- Controlled Variability:Excessive SPF may produce erratic responses, whereas moderate, structured fluctuation supports exploration without destabilizing coordination.
- Efficient Task-Shifting:Systems with balanced SGR and SS reconfigure task-specific structures with lower cognitive or computational cost.
8.3. Error Propagation and Recovery
- Localized Error Containment:High SS prevents small human or AI errors from cascading into joint failure states.
- Cross-Agent Error Dampening:When HA-C is strong, each agent compensates for the other’s transient deviations through predictive feedback.
- Recovery Trajectories:Agents with high SGR return to stable performance states more quickly after disruptions.
8.4. Division of Computational Labor
- Humans:Often excel in high-SM environments requiring contextual integration, analogy formation, and pattern restructuring.
- AI Systems:Typically outperform humans in high-SGR and high-SS regimes where rapid compression, filtering, and optimization are required.
- Joint Optimization:HA-C governs how these strengths are combined. High coherence allows each agent’s structural advantages to complement the other’s limitations without requiring symmetry.
8.5. Policy Calibration and Predictive Alignment
- Policy Drift:Large increases in SPF or reductions in SM raise the risk of policy divergence.
- Alignment Stability:Strong HA-C stabilizes shared policies through cross-agent structural referencing rather than explicit instruction.
- Predictive Symmetry:When predictive-error dynamics converge across agents, fewer communication signals are needed to maintain coordination.
8.6. Boundary Conditions for Reliable Collaboration
- Minimum SM Threshold:Below a certain level of structural organization, neither agent can parse the other’s informational signals.
- Maximum Tolerable SPF:When Structural Predictive Fluctuations exceed a threshold, coordination deteriorates regardless of communication bandwidth.
- Coherence Floor:HA-C must surpass a minimal level for structural variables to remain interpretable across agents.
8.7. Summary
9. Conclusions
Author Note—AI Assistance Statement
Appendix A. Notation Summary
- X(t) — Internal state of an agent at time t
- S ⊂ R^n — State space in which X(t) is defined
- I(t) — Incoming information at time t
- Î(t) — Expected input (internal model prediction)
- ε(t) = I(t) − Î(t) — Prediction error
- C(X(t)) — Controllability structure of the agent’s state
- SM(t) — Structural Magnitude
- SPF(t) — Structural Predictive Fluctuation
- SS(t) — Structural Suppression
- SGR(t) — Structural Gain Rate
- HA-C(t) — Human–AI Coherence
Appendix B. Structural Variable Definitions
- SM(t) — Structural Magnitude; the amount of task-relevant structure encoded in the agent’s state X(t).
- SPF(t) — Structural Predictive Fluctuation; variability in prediction error ε(t) across a finite interval.
- SS(t) — Structural Suppression; degradation of task-relevant structure due to interference or capacity limits.
- SGR(t) — Structural Gain Rate; the rate at which new task-relevant structure is acquired over time.
- HA-C(t) — Human–AI Coherence; degree of compatibility between two agents’ structural and predictive trajectories.
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