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Don’t Ruin the Surprise: Temporal Aggregation Bias in Structural Innovations

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  • Stephen Snudden

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  • Stephen Snudden, 2024. "Don’t Ruin the Surprise: Temporal Aggregation Bias in Structural Innovations," LCERPA Working Papers jc0149, Laurier Centre for Economic Research and Policy Analysis, revised Nov 2024.
  • Handle: RePEc:wlu:lcerpa:jc0149
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