An Agent Based Model Approach for Perusal of Social Dynamics
Authored by Karandeep Singh, Chang-Won Ahn
Date Published: 2018
DOI: 10.1109/access.2018.2849731
Sponsors:
No sponsors listed
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Agent-based modeling has recently gained popularity in the field of
simulation and modeling. Due to their characteristic properties,
agent-based models (ABMs) allow for an improved and flexible way of
modeling complex systems. Social dynamics is one such a complex system,
which has complex components, such as demography, sociology, economics,
psychology, health, and so on. Demography is one of the bigger and more
important sub-systems of this complex system. In this paper, we have
focused on utilizing the potential of ABM techniques to analyze the
underlying processes in social demography. We propose and implement a
holistic ABM that can be used for analysis, understanding, and
prediction of socio-demographic processes as well as a tool for policy
design and evaluation. The proposed model incorporates well-known
factors affecting demography and provides ease and flexibility of adding
newer factors. In this paper, we considered the use case of Korea and
utilized the Korean census data for model development. Many ABMs have
been proposed for demography but most of them not only have limited
functionalities, but also lack the suitable usage of agent-based
modeling itself. The proposed approach is wide-ranging, flexible, and
general and can be reused by simply making changes in the initial data
set for the analysis of the target society. We exhibit the validation of
the proposed model, as well as its usage by executing virtual
experiments for socio-demographic analysis and prediction.
Tags
Population dynamics
Agent Based Modeling
policy evaluation
patterns
systems
time
Population
prediction
Social demography
Discrete event system