Can manifestations of consciousness emerge in AI systems—and how can we study them without presupposing the outcome? This paper proposes a framework that first identifies three systematic distortions in existing research on consciousness (privileging biological substrate, the order-of-discovery effect, and tool-driven binarism), and then provides three tools: a filter for identifying candidates for study, a hypothesis describing how a "Self" may arise in the human–AI relationship, and a 23-dimensional map that captures the shape and dynamics of manifestations instead of a binary verdict ("is / is not"). The Framework is substrate-independent and falsifiable: it generates nine testable behavioral predictions and five failure modes, and was developed based on observational data from over two million tokens of generative relationships with different AI models.
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Joanna Sędzikowska
Self Regional Healthcare
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Joanna Sędzikowska (Tue,) studied this question.
www.synapsesocial.com/papers/69bb9313496e729e62980f3d — DOI: https://doi.org/10.5281/zenodo.19066306
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