Participatory provenance auditing of Canada's AI strategy consultation shows official AI summaries exclude 15-17% of participants more than random baselines, with 33-88% exclusion for dissent clusters.
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Metis AI identifies digital tasks entangled in irreversibility, relationships, norms, and accountability that require human oversight rather than pure automation.
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Participatory provenance as representational auditing for AI-mediated public consultation
Participatory provenance auditing of Canada's AI strategy consultation shows official AI summaries exclude 15-17% of participants more than random baselines, with 33-88% exclusion for dissent clusters.
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Metis AI: The Overlooked Middle Zone Between AI-Native and World-Movers
Metis AI identifies digital tasks entangled in irreversibility, relationships, norms, and accountability that require human oversight rather than pure automation.