A Micro-Level Data-Calibrated Agent-Based Model: The Synergy between Microsimulation and Agent-Based Modeling
Authored by Jang Won Bae, Karandeep Singh, Euihyun Paik, Chang-Won Ahn, Chun-Hee Lee
Date Published: 2018
DOI: 10.1162/artl_a_00260
Sponsors:
No sponsors listed
Platforms:
C
Model Documentation:
Other Narrative
Flow charts
Model Code URLs:
Model code not found
Abstract
Artificial life (ALife) examines systems related to natural life, its
processes, and its evolution, using simulations with computer models,
robotics, and biochemistry. In this article, we focus on the computer
modeling, or soft, aspects of ALife and prepare a framework for
scientists and modelers to be able to support such experiments. The
framework is designed and built to be a parallel as well as distributed
agent-based modeling environment, and does not require end users to have
expertise in parallel or distributed computing. Furthermore, we use this
framework to implement a hybrid model using microsimulation and
agent-based modeling techniques to generate an artificial society. We
leverage this artificial society to simulate and analyze population
dynamics using Korean population census data. The agents in this model
derive their decisional behaviors from real data (microsimulation
feature) and interact among themselves (agent-based modeling feature) to
proceed in the simulation. The behaviors, interactions, and social
scenarios of the agents are varied to perform an analysis of population
dynamics. We also estimate the future cost of pension policies based on
the future population structure of the artificial society. The proposed
framework and model demonstrates how ALife techniques can be used by
researchers in relation to social issues and policies.
Tags
Social simulation
Microsimulation
policy evaluation
Artificial life
Agent-based
modeling
Artificial society
Data-driven simulation
Virtual society