Saltar al contenido principal

Escribe una PREreview

When Coherence Measures Become Meaningful: Covariance as a Precondition for Structural Signal Interpretability

Publicada
Servidor
Zenodo
DOI
10.5281/zenodo.20634665

Existing coherence metrics are frequently interpreted as reflecting intrinsic structural properties of a system or output. Yet this interpretation remains unjustified if the signal varies under transformations that preserve the underlying content. We address this problem by introducing covariance as a necessary condition for the interpretability of structural coherence signals.

Within the CMCI framework (St-Louis, 2026), covariance is defined as invariance — or bounded stability — of the signal trajectory under a pre-declared family of admissible context transformations. We formalize this concept mathematically, distinguishing strict covariance from tolerance-bounded covariance, and show how it can be falsified through explicit counterexamples. We then present a reproducible empirical protocol based on controlled prompt transformations, identity and cross-topic controls, and an equivalence-based statistical framework.

In a pilot study (K = 30 session pairs, T = 10 turns), the CMCI μ signal remains stably bounded under syntactic paraphrase (95% upper confidence limit on the 90th percentile of maximum pointwise deviation: 0.065, below the pre-registered tolerance ε_μ = 0.10) while remaining strongly discriminative across genuine content changes (cross-topic median deviation: 0.253; 100% of sessions exceeding the tolerance).

These results establish covariance not as a claim of correctness, but as a necessary precondition for interpretability: a structural signal that is not stable under admissible reformulations cannot be meaningfully treated as reflecting content-level structure. This reframes coherence evaluation from a problem of score design alone to one of measurement validity under transformation.

This preprint is part of the CMCI / Coherix research program and complements the framework paper published in Frontiers in Artificial Intelligence (DOI: 10.3389/frai.2026.1836120).

Puedes escribir una PREreview de When Coherence Measures Become Meaningful: Covariance as a Precondition for Structural Signal Interpretability. Una PREreview es una revisión de un preprint y puede variar desde unas pocas oraciones hasta un extenso informe, similar a un informe de revisión por pares organizado por una revista.

Antes de comenzar

Te pediremos que inicies sesión con tu ORCID iD. Si no tienes un iD, puedes crear uno.

¿Qué es un ORCID iD?

Un ORCID iD es un identificador único que te distingue de otros/as con tu mismo nombre o uno similar.

Comenzar ahora