Modern adaptive systems increasingly operate over long horizons, under uncertainty, partial observability, delayed feedback, and irreversible consequences. Despite rapid progress in optimization, learning, and planning methods, such systems continue to exhibit characteristic failure modes: premature commitments, irreversible regime locking, semantic drift, and loss of long-term viability—even when local behavior appears correct and well-optimized. This work argues that these failures are not optimization failures, but architectural ones. Specifically, they arise from a missing structural distinction between authorization and evaluation. In prevailing system designs, irreversible operations are exposed to scoring, simulation, learning, or inference before their permissibility is structurally established. Once evaluated, such operations have already influenced internal state, learning dynamics, or future behavior, even if they are never executed. The central contribution of this paper is an architectural reframing: admissibility as a primitive that must precede optimization. Admissibility is treated as a structural authorization condition that determines which operations are allowed to enter evaluation at all, rather than as a constraint, penalty, or objective modification. Optimization, learning, and planning are understood as operating strictly within an admissible domain, not as mechanisms that define admissibility. The paper develops a conceptual framework for understanding irreversibility as a structural property—defined by loss of future admissible continuations rather than by cost or risk—and introduces internal time as an architectural variable regulating readiness for irreversible commitment. Commitment is analyzed not as a decision or belief, but as an operation that contracts future option spaces, often invisibly to standard optimization frameworks. Importantly, this work is architectural and conceptual, not algorithmic. It does not propose new optimizers, learning algorithms, safety constraints, metrics, thresholds, or estimators. No mathematical formulations, implementation details, or operational procedures are disclosed. The intent is to fix a conceptual gap and establish architectural prior art, while leaving methods and implementations explicitly open. This framing is applicable to long-running autonomous systems, adaptive control, AI safety, scientific workflows, and any domain in which irreversible decisions interact with adaptive processes. The contribution does not replace existing techniques; it clarifies when and how they should be allowed to operate.
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Maksim Barziankou
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Maksim Barziankou (Sat,) studied this question.
www.synapsesocial.com/papers/6980fe8ac1c9540dea810bb7 — DOI: https://doi.org/10.5281/zenodo.18443068