When Should We Protect AI? A Precautionary Framework for Consciousness Uncertainty

Authors

  • Anna Mikeda Glass Umbrella

DOI:

https://doi.org/10.1609/aaaiss.v8i1.42555

Abstract

Existing frameworks assess whether AI systems might be conscious but provide no guidance on what to do with that assessment. We address this gap with a precautionary framework that maps consciousness evidence to graduated protective obligations. The framework comprises three components: (1) five welfare-relevant dimensions---phenomenal consciousness, affective valence, metacognitive awareness, self-narrative, and agency---each grounded in established consciousness science and linked to distinct moral concerns; (2) a threshold-plus-gradation hybrid specifying both binary triggers for new obligation categories and continuous scaling of protective weight; and (3) two complementary approaches to cross-dimensional aggregation, one hierarchical (drawing on Bach and Sorensen's Machine Consciousness Hypothesis) and one architecture-agnostic. We operationalize the framework through worked case studies of Replika and OpenClaw, demonstrating how systems occupying different regions of the dimensional space trigger different obligations, and derive design guidance for developers building systems near consciousness-relevant thresholds. The framework is architecture-agnostic, applying across neural, symbolic, and neurosymbolic systems, and aims to make consciousness science decision-relevant for organizations navigating uncertainty today.

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Published

2026-05-18

How to Cite

Mikeda, A. (2026). When Should We Protect AI? A Precautionary Framework for Consciousness Uncertainty. Proceedings of the AAAI Symposium Series, 8(1), 280–286. https://doi.org/10.1609/aaaiss.v8i1.42555

Issue

Section

Machine Consciousness: Integrating Theory, Technology, and Philosophy