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Appendix 8.

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Appendix 8.

Bayesian p-values for half-normal and negative-exponential formulations of winter and spring community detection models when model included no other detection covariates. Values closer to 0.5 indicate better fit.

Model

Bayesian p-value

Winter half-normal 0.00

Winter negative-exponential 0.07

Spring half-normal 0.00

Spring negative-exponential 0.41

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