Where to go goose hunting? Using pattern-oriented modeling to better understand human decision processes
Authored by Jesper Madsen, Lars Dalby, James Henty Williams, Chris J Topping, Kevin K Clausen
Date Published: 2018
DOI: 10.1080/10871209.2018.1509249
Sponsors:
No sponsors listed
Platforms:
ALMaSS
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
To predict hunting pressure at a regional level for the adaptive harvest
management of a European goose population, we created a predictive model
within an existing agent-based model framework. In this paper, we
outline the inputs, outputs, and learning from developing this model,
using pattern-oriented modeling (POM), to predict the regional
distribution of goose hunting locations. Our results showed that social
aspects (e.g., crowding, how far hunters are prepared to travel) may
influence hunter decisions when choosing hunting locations. However,
access to multiple hunting locations and knowledge of goose behavior and
likely foraging areas were more important decision drivers. A crucial
model outcome was the secondary prediction of the size of the potential
pool of goose hunters. We believe that POM is a beneficial framework for
those wishing to define, test, and ultimately develop better predictive
models of human decision-making and subsequent behaviors and feedbacks.
Tags
Agent-based model
Management
ALMaSS
modeling
population
Decision Processes
Coupled human
Natural systems
Anser-brachyrhynchus
Geese
Pink-footed geese
Hunters
Field
utilization
West jutland
Denmark