Future Climate Change Impacts on U.S. Agricultural Yields, Production, and Market
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A. Ruane | M. Sarofim | P. Schultz | J. Jägermeyr | C. Mutter | Meridel Phillips | Amanda Vargo | C. Fei | Bruce McCarl | E. Contreras
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