In deterministic partially observable worlds, perfect prediction requires either identifying the relevant hidden quotient or achieving overwrite control, while high empowerment alone is insufficient.
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11 Pith papers cite this work, alongside 4,171 external citations. Polarity classification is still indexing.
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Closes the missing direction of an open question on incomparability of two induction theories via a short syntactic argument and extracts the Syntactic Invariance Principle.
A crumbling abstract machine yields a reversible Landauer's embedding for call-by-value lambda calculus with constant space overhead per step.
Information defined as maximum-caliber deviation derives IIT 3.0 cause-effect repertoires from constrained entropy maximization and equates to prediction error under CLT and LDT.
Positive-rate probabilistic cellular automata admitting stationary Bernoulli measures are exponentially ergodic with logarithmic mixing times for finite regions.
Defines a Cognitive Kardashev Scale using total power, cognitive fraction f, compute efficiency η, and brain reference to place current humanity at K ≈ 0.73 and estimate Type I/II capacities.
A thermodynamic-inspired information-geometric framework defines a composite LLM stability score that outperforms a utility-entropy baseline by 0.0299 on average across 80 observations, with gains increasing at higher entropy.
Soft matter systems are modeled as information channels of increasing complexity, yielding a heuristic thermodynamic ceiling on information processing performance and a performance gap to biology attributed to per-element energy scales.
Nonlinear detuning stabilizes non-adiabatic magnonic dynamics in YIG:Co nanostructures, enabling low-occupancy resonant states with estimated 22 aJ switching energy.
The Kerimov-Alekberli model uses KL divergence on a Riemannian manifold with a Fisher-derived threshold and the Landauer principle to treat adversarial perturbations as measurable physical work for real-time AI system stability.
citing papers explorer
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Prediction and Empowerment: A Theory of Agency through Bridge Interfaces
In deterministic partially observable worlds, perfect prediction requires either identifying the relevant hidden quotient or achieving overwrite control, while high empowerment alone is insufficient.
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A Reversible Crumbling Abstract Machine for Plotkin's Call-by-Value
A crumbling abstract machine yields a reversible Landauer's embedding for call-by-value lambda calculus with constant space overhead per step.
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Information as Maximum-Caliber Deviation: A bridge between Integrated Information Theory and the Free Energy Principle
Information defined as maximum-caliber deviation derives IIT 3.0 cause-effect repertoires from constrained entropy maximization and equates to prediction error under CLT and LDT.