How to translate text using browser tools
1 June 2009 Application of Cohort Analysis to Large Terrestrial Mammal Harvest Data
Mayumi Ueno, Takashi Matsuishi, Erling Johan Solberg, Takashi Saitoh
Author Affiliations +
Abstract

Cohort analysis (also known as virtual population analysis) is a method of population reconstruction from age-specific harvest data. Because cohort analysis requires data over a whole life span to reconstruct a population for a single year, this method is impracticable for longer-lived animals. Three models are routinely combined by fisheries scientists to make cohort analysis more cost effective and to provide real-time estimates of population size; these models may be applied to large terrestrial mammal harvest data. Each model has unique assumptions about hunting mortality rates or age distributions, and the reliability of estimates depends on meeting these assumptions. In this study, we first tested previously used assumptions for these models through an analysis of long-term moose (Alces alces) harvest data, followed by an examination of the robustness of estimates for each moose age class. We developed practical ways to achieve more realistic assumptions for two of three models and showed that meeting these assumptions was more important in estimations of large terrestrial mammal population parameters than for fish population parameters. Therefore, we recommend compliance with assumptions of the three models for more reliable population estimates of large terrestrial mammals.

Mayumi Ueno, Takashi Matsuishi, Erling Johan Solberg, and Takashi Saitoh "Application of Cohort Analysis to Large Terrestrial Mammal Harvest Data," Mammal Study 34(2), 65-76, (1 June 2009). https://doi.org/10.3106/041.034.0202
Received: 24 July 2008; Accepted: 1 September 2008; Published: 1 June 2009
KEYWORDS
estimation error
hunting
methodology
population size
virtual population analysis
RIGHTS & PERMISSIONS
Get copyright permission
Back to Top