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Improved Models for Predicting Walleye Abundance and Setting Safe Harvest Quotas in Northern Wisconsin Lakes
Author(s) -
Hansen Gretchen J. A.,
Hennessy Joseph M.,
Cichosz Thomas A.,
Hewett Steven W.
Publication year - 2015
Publication title -
north american journal of fisheries management
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.587
H-Index - 72
eISSN - 1548-8675
pISSN - 0275-5947
DOI - 10.1080/02755947.2015.1099580
Subject(s) - abundance (ecology) , sampling (signal processing) , linear regression , environmental science , statistics , generalized linear model , mixed model , fishery , population , data set , linear model , regression analysis , ecology , mathematics , biology , demography , computer science , filter (signal processing) , sociology , computer vision
In Wisconsin, the management of Walleyes Sander vitreus relies on a set of log‐linear regressions to predict Walleye abundance and to set safe harvest. The regression models predict mean Walleye abundance from lake area, but they ignore variability among years; they also predict equal Walleye populations in lakes with the same size and recruitment source. We evaluated three alternative models in terms of predictive accuracy and the risk of overharvest. We used 899 mark–recapture population estimates (collected between 1953 and 2013) from 219 lakes to develop and evaluate (1) a log‐linear mixed‐effects model that used all individual observations and estimated adult Walleye abundance from lake area and lake‐specific deviations from the overall intercept; (2) a mixed‐effects model that builds on model 1 by adding a linear fixed effect of sampling year; and (3) a mixed‐effects model that builds on model 1 by adding a random year effect. Walleye abundance was positively correlated with lake area in all models and was negatively correlated with sampling year (when included). Alternative models improved predictive accuracy by 17–22% over the current regression model. Restricting data to those collected during the most recent 20 years improved model responsiveness to new data and reduced the value of including a linear time trend. When all data were used for model construction, the relative risk of overharvest was lowest under the mixed‐effects model with a linear time trend; when the most recent 20 years of data were used, the risk was lowest under the mixed‐effects model with a random year effect. Accounting for variability among years would allow harvest to track changing Walleye populations and would allow management to be more adaptive. We recommend using the mixed‐effects model with a random year effect and restricting the data inputs to the most recent 20 years. Received May 20, 2015; accepted September 17, 2015