Can diagnostic tests help identify model misspecification in integrated stock assessments
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Kevin R. Piner | André E. Punt | Mark N. Maunder | Felipe Carvalho | Yi-Jay Chang | A. Punt | F. Carvalho | Yi‐Jay Chang | M. Maunder | K. Piner
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