The practice of prediction: What can ecologists learn from applied, ecology-related fields?
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Donald L. DeAngelis | Owen L. Petchey | M. W. Adamson | Bob W. Kooi | Maíra Aguiar | Daniel B. Botkin | Jean-Christophe Poggiale | Frank Pennekamp | D. DeAngelis | O. Petchey | D. Botkin | Frank Pennekamp | B. Kooi | J. Poggiale | M. Aguiar
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