Weather dataset choice introduces uncertainty to estimates of crop yield responses to climate variability and change
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T. Higginbottom | K. Hufkens | B. Kramer | B. Parkes | F. Ceballos | B. Kramer | T. Foster | T. Foster | Ben Parkes | Thomas P. Higginbottom | Francisco Ceballos
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