Abstract
AbstractWe compare judgments of green turtle (Chelonia mydas) captures elicited from local gillnet skippers and not‐for‐profit conservation organization employees operating in a small‐scale fishery in Peru, to capture rates calculated from a voluntary at‐sea observer program operating out of the same fishery. To reduce cognitive biases and more accurately quantify uncertainty in our experts’ judgments, we followed the IDEA (“Investigate,” “Discuss,” “Estimate,” and “Aggregate”) structured elicitation protocol. The elicited mean monthly estimates of green turtle gillnet captures within summer and winter fishing seasons were higher than the equivalent green turtle capture rates calculated from the fisheries observer data; however, no statistically significant differences were identified when comparing the means of the datasets using bootstrap hypothesis tests (winter observed difference‐in‐means: 83.15, adj mean ± SD = 42.39 ± 32.59; summer observed difference‐in‐means: 68.58, adj mean ± SD = 54.06 ± 41.22). We investigated respondent performance in relation to the observer data capture rates. The not‐for‐profit employees scored high on accuracy and calibration performance metrics. The gillnet skippers’ judgments ranked higher on informativeness yet lower on accuracy and calibration, potentially reflective of overconfident judgments. This research presents a new context for using the IDEA protocol, which may prove helpful for rapid, exploratory evaluations of capture and bycatch impact in data‐limited small‐scale fishery management scenarios.
Highlights
We tested the null hypothesis that, within each fishing season, the mean monthly number of green turtle captures in the San Jose inshore/midwater gillnet fleet calculated from the elicitation exercise is the same as the capture rate calculated from the observer data
Comparison of participant judgements with onboard observer data Following the analysis undertaken for green turtles presented in the main text, Generalized Linear Mixed Model (GLMM) were used to estimate the predictive power of vessel weight class for leatherback turtle catch while controlling for seasonal and annual temporal variations, fishing effort, and inter-vessel variation within the fleet as a random effect
I don’t have any changes to make to my original estimates
Summary
Data: Green turtle bycatch (binomial) ~ GRT + Season + Year + Soak time + Net (km) +. Chi squared = 6.6852 df = 6 p-value = 0.3509 alternative hypothesis: one model is inconsistent. Failing to reject the null hypothesis of random effects (against fixed effects) we proceeded with a Generalized Linear Mixed Model (GLMM) to integrate both fixed and random effect variables into our model
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.