This work extends the formal operationalization of internal intention in AI systems (v1, DOI: 10.5281/zenodo.19376962) into a full measurement and validation framework. Version 2.0 introduces: identifiability with constructive exclusion and worst-case bounds; robust statistical guarantees (UCB, independence, multiple testing correction); intervention coverage with information-theoretic thresholds; elicitability as an optimization problem; external validation via independent proxy triad; false negative characterization and detection boundary (α*). This document defines the detection core and measurement theory. Companion work addresses construct validity and necessity. This work is also subject to the ORIGÓ License (see document).
Omri Bankuti (Thu,) studied this question.
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