The Missing Knowledge Layer in AI: A Framework for Stable Human-AI Reasoning
Rikard Rosenbacke, Carl Rosenbacke, Victor Rosenbacke, Martin McKee

TL;DR
This paper introduces a two-layer framework to stabilize human-AI reasoning, making uncertainty and drift visible to improve trustworthiness and governance in high-stakes decision-making.
Contribution
It proposes a novel operational framework combining human-side mechanisms and a model-side control loop to enhance reasoning stability and traceability.
Findings
Framework increases signal-to-noise ratio at the point of use.
Enables uncertainty and drift to be visible before enforcement.
Supports compliance with emerging AI governance standards.
Abstract
Large language models are increasingly integrated into decision-making in areas such as healthcare, law, finance, engineering, and government. Yet they share a critical limitation: they produce fluent outputs even when their internal reasoning has drifted. A confident answer can conceal uncertainty, speculation, or inconsistency, and small changes in phrasing can lead to different conclusions. This makes LLMs useful assistants but unreliable partners in high-stakes contexts. Humans exhibit a similar weakness, often mistaking fluency for reliability. When a model responds smoothly, users tend to trust it, even when both model and user are drifting together. This paper is the first in a five-paper research series on stabilising human-AI reasoning. The series proposes a two-layer approach: Parts II-IV introduce human-side mechanisms such as uncertainty cues, conflict surfacing, and…
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