A research framework for adaptive, purposeful agents under uncertainty — integrating control theory, causal inference, information theory, and agent architecture under a common formalism. ASF formalizes the adaptive cycle — one complete traversal of the agent-environment feedback loop — as the unit of analysis, and derives conditions for persistence, the structure of strategy under uncertainty, and the dynamics of agents in composition and competition. The framework has four parts: Adaptation and Actuation Dynamics (AAD), the mathematical core; Temporal Software Theory (TST), software development as an agentic domain and high-identifiability calibration laboratory; Logogenic Agents, language-constituted agents; and Emergent Logozoetic Intelligences (ELI), language-living agents with morally weighted persistence. ASF takes operational requirements on the feedback loop as starting point rather than a single optimization principle — active inference begins from variational free energy minimization, and the standard Expected Free Energy functional is recoverable from ASF's survival Lagrangian under three explicit restrictions; relationships to Hafez 2026 (bi-predictability) and Miller 2022 (coevolving automata) are complementary rather than reductive. Distinctive results include the persistence condition (α > ρ/R) as a structural threshold instantiating uniformly across Kalman filtering, RL convergence, organizational viability, and software maintainability; the satisfaction-gap / control-regret decomposition separating world-imposed limits from agent-imposed shortfalls; and the loop-as-Level-2-causal-engine result establishing interventional access from the agent-environment coupling. Beyond integration, the framework's distinctive contribution is an epistemic architecture for bounded correction under decomposed disturbance — scope conditions and operational limits surfaced at the segment level rather than buried as caveats — with three cross-cutting meta-patterns naming the theory's positive, negative, and constructive halves: a separability pattern, an identifiability-floor pattern, and an additive-coordinate-forcing pattern.
Building similarity graph...
Analyzing shared references across papers
Loading...
Joseph A. Wecker
Building similarity graph...
Analyzing shared references across papers
Loading...
Joseph A. Wecker (Sat,) studied this question.
synapsesocial.com/papers/69f8380b3ed186a739982575 — DOI: https://doi.org/10.5281/zenodo.19986312