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Comparing Two Sources of Retail Meat Price Data

Author

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  • Hahn, William F.
  • Perry, Janet E.
  • Southard, Leland W.

Abstract

The livestock industry uses information on meat prices at different stages in the marketing system to make production decisions. When grocery stores began using electronic scanners to capture prices paid for meat, it was assumed that the livestock industry could capitalize on having these point-of-sale data available as a measure of the value of its products. This report compares scanner price data with publicly available data collected by the U.S. Department of Labor’s Bureau of Labor Statistics (BLS). Of the two data types, scanner data provide more information about retail meat markets, including a wider variety of meat-cut prices, multiple measures of an average price, the volume of sales, and the relative importance of discounted prices. The scanner data sample, however, is not statistically drawn, and complicated processing requirements delay its release, which makes scanner data less useful than BLS data for analyzing current market conditions.

Suggested Citation

  • Hahn, William F. & Perry, Janet E. & Southard, Leland W., 2009. "Comparing Two Sources of Retail Meat Price Data," Economic Research Report 55958, United States Department of Agriculture, Economic Research Service.
  • Handle: RePEc:ags:uersrr:55958
    DOI: 10.22004/ag.econ.55958
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    References listed on IDEAS

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    Cited by:

    1. Panos Fousekis & Dimitra Tzaferi, 2022. "Tail price risk spillovers along the US beef and pork supply chains," Australian Journal of Agricultural and Resource Economics, Australian Agricultural and Resource Economics Society, vol. 66(2), pages 383-399, April.
    2. Pozo, Veronica F. & Bachmeier, Lance J. & Schroeder, Ted C., 2021. "Are there price asymmetries in the U.S. beef market?," Journal of Commodity Markets, Elsevier, vol. 21(C).

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    More about this item

    Keywords

    Agricultural and Food Policy; Agricultural Finance; Livestock Production/Industries; Marketing;
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