Fisheries biology includes a tremendous and exciting range of research topics. Basic and applied research is increasingly tasked with understanding risks to the environment and the human communities that it supports. These risks are generally assessed using statistical models, which reconcile available data with ecological theory.
In this paper, the authors show that all modelling methods used in fisheries biology have to deal with variables that are observed either indirectly or not at all. Both kinds of variables cause available data to be correlated, which violates the assumptions of simple approaches to statistical modelling. They also show that this difficulty is generally solved by treating unobserved variables as random effects. Random effects therefore unify modelling efforts in the many subfields of fisheries biology.
The authors support this claim by highlighting four examples: the reconstruction of historical changes in population abundance for an exploited fish population, a spatial analysis of fish habitats, an analysis of growth experiments, and an experimental analysis of genetic variation. All four examples show important differences when including or neglecting the effect of unobserved variables. The inclusion of random effects is therefore shown to be a common theme throughout analysis and modelling for fisheries biologists.