
pmid: 38700021
AbstractWe introduce a new class of zero‐or‐one inflated power logit (IPL) regression models, which serve as a versatile tool for analyzing bounded continuous data with observations at a boundary. These models are applied to explore the effects of climate changes on the distribution of tropical tuna within the North Atlantic Ocean. Our findings suggest that our modeling approach is adequate and capable of handling the outliers in the data. It exhibited superior performance compared to rival models in both diagnostic analysis and regarding the inference robustness. We offer a user‐friendly method for fitting IPL regression models in practical applications.
Tropical Climate, Biometry, Tuna, fish migration, global warming, Applications of statistics to biology and medical sciences; meta analysis, Logistic Models, fractional data, power logit distributions, Animals, Atlantic Ocean, continuous proportions
Tropical Climate, Biometry, Tuna, fish migration, global warming, Applications of statistics to biology and medical sciences; meta analysis, Logistic Models, fractional data, power logit distributions, Animals, Atlantic Ocean, continuous proportions
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