This paper presents a methods-focused account of how Structural Intelligence (SI) can avoid becoming performative in public and AI-mediated use. SI was developed to test whether people, systems, institutions, and AI outputs remain answerable to evidence, contradiction, consequence, and revision. The paper argues that the framework itself can fail when its vocabulary is used to suggest hidden pressure, contradiction, or structural depth without enough support. It names that failure SI-theater and proposes a practical correction built around the distinction between observation and inference. A stronger SI reading, the paper argues, should show what is directly present in the material, what is being inferred from it, what evidence supports each major claim, what remains uncertain, and what future information could falsify the interpretation. The paper also examines overreading in human-AI discourse, where responsiveness, continuity, and emotional fluency can be inflated into claims about interiority, witness, or machine being that the evidence does not justify. Overall, the paper contributes to epistemology, interpretive method, AI ethics, and human-AI analysis by offering a more disciplined framework for structural reading that resists both false depth and empty caution.
Vladisav Jovanovic (Tue,) studied this question.