THE PARADOX OF DIGITAL INVISIBILITY: QUANTIFYING THE IMPACT OF ALGORITHMIC BLINDNESS IN CORPORATE DATA (N=150 ANALYSIS)
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Current digital marketing metrics rely heavily on "traffic volume" as a proxy for relevance. However, the rise of Large Language Models (LLMs) requires a shift from popularity-based metrics to structure-based retrieval. This study analyzes N = 150 corporate websites across 10 heterogeneous industries to test a new hypothesis: that "Structural Hygiene" (e.g., canonical tags, schema markup) is a stronger predictor of Generative AI visibility than brand popularity. Using an OLS regression model, we achieved a predictive power of R² = 91.82%, but uncovered a critical "Statistical Collapse" (VIF > 42) due to multicollinearity between brand noise and technical signal. This paper presents the "QCSM Paradox": high-value/low-traffic sites remain invisible to LLMs due to architectural flaws, creating "AI Hallucinations" based on data ingestion failures. We propose the Quality Certification Scoring Model (QCSM) as a new engineering standard to isolate technical merit from brand noise.
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Carlos_Jurado_Peralta_QCSM_Paradox_2026.pdf
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