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  "documentTitle": "2025 The new rules of Platform Strategy in the age of agentic AI",
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      "text": "Outcome_i,2024 = α + βBinary_i + γOutcome_i,2023 + δ1Industry_i + δ2Region_i + ε_i",
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      "text": "The dependent variable is the 2024 outcome. The key predictor is the selected “Enterprise platform strategy in the age of agentic AI” survey item, transformed as a binary variable. Controls include (i) baseline performance (prior-year level of the metric) and (ii) controls for industry and region. Robust standard errors to account for heteroskedasticity.",
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      "text": "We complemented survey and interview insights with a structured task-level analysis of the U.S. workforce, using O*NET Online and U.S. Bureau of Labor Statistics data.",
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