Version 1. 1 — This version adds: a compact formal equation set consolidating the five-stage pipeline; explicit treatment of baseline state Bₜ as a control parameter modulating precision weighting throughout the architecture; Figure 5, a joint parameter sensitivity heatmap demonstrating nonlinear interaction effects between baseline noise and threat precision; Spearman correlation statistics establishing statistical robustness of key simulation relationships (ρ = 1. 000 and ρ = 0. 976, both p < 0. 001) ; and four quantitative empirically falsifiable predictions with explicit operationalizations and falsification criteria. This paper introduces the Salience Engine, a coordination-level architecture proposing that cognitive coordination can be formalized as a five-stage pipeline — Pressure, Parsing, Salience, Mode, and Action — describing how relevance-weighted signals guide transitions between metastable cognitive configurations. The model is grounded in predictive processing and the Free Energy Principle while remaining compatible with dynamical systems approaches and attention-based computational architectures. Cognitive coordination is modeled as motion through a salience-structured state space in which precision-weighted signals influence transitions between metastable processing modes. A precision calibration layer — jointly regulated by neuromodulatory state, interoceptive input, learned priors, and active goal context — determines the gain of salience computation and provides the mechanism through which individual differences, clinical variation, and intervention effects arise. Neurodivergent conditions such as autism, ADHD, and trauma are modeled as parametric variations in salience weighting and mode stability rather than as deficits in cognitive capacity. Executive function is framed as meta-cognitive access to one's own salience dynamics, enabling deliberate intervention in otherwise automatic processing. The framework generates empirically testable predictions regarding neural coordination dynamics, cognitive switching costs, and individual differences in salience weighting. Quantitative simulation results demonstrate parameterized generative behavior spanning stable flow-state occupancy, vigilance lock, and attentional drift across architectural configurations. The Salience Engine is proposed as a coordination-level scaffold integrating existing cognitive theories while providing a structured vocabulary for describing relevance-driven cognition across biological and artificial systems.
Building similarity graph...
Analyzing shared references across papers
Loading...
Patrick St-Hilaire
Building similarity graph...
Analyzing shared references across papers
Loading...
Patrick St-Hilaire (Sun,) studied this question.
www.synapsesocial.com/papers/69bf8978f665edcd009e9273 — DOI: https://doi.org/10.5281/zenodo.19122534
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: