Title of article :
Using Agent-Based Models to Develop Public Policy about Food Behaviours: Future Directions and Recommendations
Author/Authors :
Giabbanelli, Philippe J Department of Computer Science - Northern Illinois University - DeKalb, USA , Crutzen, Rik Department of Health Promotion - Maastricht University - Maastricht, Netherlands
Abstract :
Most adults are overweight or obese in many western countries. Several population-level interventions on the physical, economical,
political, or sociocultural environment have thus attempted to achieve a healthier weight. These interventions have involved
different weight-related behaviours, such as food behaviours. Agent-based models (ABMs) have the potential to help policymakers
evaluate food behaviour interventions from a systems perspective. However, fully realizing this potential involves a complex
procedure starting with obtaining and analyzing data to populate the model and eventually identifying more efficient cross-sectoral
policies. Current procedures for ABMs of food behaviours are mostly rooted in one technique, often ignore the food environment
beyond home and work, and underutilize rich datasets. In this paper, we address some of these limitations to better support
policymakers through two contributions. First, via a scoping review, we highlight readily available datasets and techniques to deal
with these limitations independently. Second, we propose a three steps’ process to tackle all limitations together and discuss its use
to develop future models for food behaviours. We acknowledge that this integrated process is a leap forward in ABMs. However, this
long-term objective is well-worth addressing as it can generate robust findings to effectively inform the design of food behaviour
interventions.
Keywords :
Agent-Based , Recommendations , Food , ABMs
Journal title :
Computational and Mathematical Methods in Medicine