Skip to main content

IMIS

[ report an error in this record ]basket (0): add | show Print this page

Spatio-temporal analysis of compositional data: increased precision and improved workflow using model-based inputs to stock assessment
Thorson, J.T.; Haltuch, M.A. (2019). Spatio-temporal analysis of compositional data: increased precision and improved workflow using model-based inputs to stock assessment. Can. J. Fish. Aquat. Sci. 76(3): 401-414. https://dx.doi.org/10.1139/cjfas-2018-0015
In: Canadian Journal of Fisheries and Aquatic Sciences = Journal canadien des sciences halieutiques et aquatiques. National Research Council Canada: Ottawa. ISSN 0706-652X; e-ISSN 1205-7533, more
Peer reviewed article  

Keywords
    Population characteristics > Population structure > Age composition
    Marine/Coastal
Author keywords
    delta-generalized linear model; spatio-temporal model; length composion

Authors  Top 
  • Thorson, J.T.
  • Haltuch, M.A.

Abstract
    Stock assessment models are fitted to abundance-index, fishery catch, and age/length/sex composition data that are estimated from survey and fishery records. Research has developed spatio-temporal methods to estimate abundance indices, but there is little research regarding model-based methods to generate age/length/sex composition data. We demonstrate a spatio-temporal approach to generate composition data and a multinomial sample size that approximates the estimated imprecision. A simulation experiment comparing spatio-temporal and design-based methods demonstrates a 32% increase in input sample size for the spatio-temporal estimator. A Stock Synthesis assessment used to manage lingcod in the California Current also shows a 17% increase in sample size and better model fit using the spatio-temporal estimator, resulting in smaller standard errors when estimating spawning biomass. We conclude that spatio-temporal approaches are feasible for estimating both abundance-index and compositional data, thereby providing a unified approach for generating inputs for stock assessments. We hypothesize that spatio-temporal methods will improve statistical efficiency for composition data in many stock assessments, and recommend that future research explore the impact of including additional habitat or sampling covariates.

All data in the Integrated Marine Information System (IMIS) is subject to the VLIZ privacy policy Top | Authors