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@ -35,13 +35,13 @@ The 60%→26% collapse in consumer enthusiasm for AI-generated creator content b
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### Additional Evidence (extend)
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### Additional Evidence (extend)
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*Source: [[2026-01-01-koinsights-authenticity-premium-ai-rejection]] | Added: 2026-03-16*
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*Source: 2026-01-01-koinsights-authenticity-premium-ai-rejection | Added: 2026-03-16*
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The binding constraint is specifically a moral disgust response in emotionally meaningful contexts, not just general acceptance issues. Journal of Business Research found that AI authorship triggers moral disgust even when content is identical to human-written versions. This suggests the gate is values-based rejection, not quality assessment.
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The binding constraint is specifically a moral disgust response in emotionally meaningful contexts, not just general acceptance issues. Journal of Business Research found that AI authorship triggers moral disgust even when content is identical to human-written versions. This suggests the gate is values-based rejection, not quality assessment.
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### Additional Evidence (confirm)
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### Additional Evidence (confirm)
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*Source: [[2026-02-01-seedance-2-ai-video-benchmark]] | Added: 2026-03-16*
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*Source: 2026-02-01-seedance-2-ai-video-benchmark | Added: 2026-03-16*
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Sora standalone app achieved 12 million downloads but retention below 8% at day 30 (vs 30%+ benchmark for successful apps), demonstrating that even among early adopters who actively sought AI video tools, usage hasn't created a compelling habit. This empirically confirms that capability has outpaced demand-side acceptance.
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Sora standalone app achieved 12 million downloads but retention below 8% at day 30 (vs 30%+ benchmark for successful apps), demonstrating that even among early adopters who actively sought AI video tools, usage hasn't created a compelling habit. This empirically confirms that capability has outpaced demand-side acceptance.
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@ -46,7 +46,7 @@ The 60%→26% enthusiasm collapse for AI-generated creator content (2023-2025) w
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### Additional Evidence (confirm)
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### Additional Evidence (confirm)
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*Source: [[2026-01-01-koinsights-authenticity-premium-ai-rejection]] | Added: 2026-03-16*
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*Source: 2026-01-01-koinsights-authenticity-premium-ai-rejection | Added: 2026-03-16*
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The 'authenticity premium' is now measurable across multiple studies. Nuremberg Institute (2025) found that simply labeling an ad as AI-generated lowers ad attitudes and willingness to purchase, creating a quantifiable trust penalty for AI authorship.
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The 'authenticity premium' is now measurable across multiple studies. Nuremberg Institute (2025) found that simply labeling an ad as AI-generated lowers ad attitudes and willingness to purchase, creating a quantifiable trust penalty for AI authorship.
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