Combining Microsimulation and Agent-Based Model for Micro-Level Population Dynamics

Population dynamics illustrates the changes of the size and age composition of populations. Modeling and simulation techniques have been used to model the population dynamics, and the developed models are utilized to design and analyze public polices. One classic modeling method is microsimulation. The microsimulation describes the population dynamics at the individual level, and actions conducted by the individuals are generated by stochastic process. An emerging method is agent-based model, which rather focuses on the interactions among individuals and expects to see unexpected situations created from the interactions. Their similar but different approaches can make them to complement weak points of the opponent in population dynamics analysis. From this perspective, This paper proposes a hybrid model structure combining microsimulation and agent-based model for modeling population dynamics. In the proposed model, the microsimulation model takes a role to depict how an individual chooses its behavior based on stochastic process parameterized by real data; the agent-based model incorporates interactions among individuals considering their own states and rules. The case study introduces Korean population dynamics model developed by the proposed approach, and its simulation results show the population changes triggered by a variance of behavior and interaction factors.

[1]  Il-Chul Moon,et al.  LDEF Formalism for Agent-Based Model Development , 2016, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[2]  G. An,et al.  Agent‐based models in translational systems biology , 2009, Wiley interdisciplinary reviews. Systems biology and medicine.

[3]  Kevin B. Korb,et al.  Synthetic Population Dynamics: A Model of Household Demography , 2013, J. Artif. Soc. Soc. Simul..

[4]  M. Batty Generative social science: Studies in agent-based computational modeling , 2008 .

[5]  John H. Conway,et al.  The game of life. , 1996, The Hastings Center report.

[6]  Donald T. Rowland,et al.  Demographic Methods and Concepts , 2003 .

[7]  Karandeep Singh,et al.  Towards full scale population dynamics modelling with an agent based and micro-simulation based framework , 2015, 2015 17th International Conference on Advanced Communication Technology (ICACT).

[8]  Francesco C. Billari,et al.  Agent based computational demography: using simulation to improve our understanding of demographic behaviour , 2003 .

[9]  G. Orcutt,et al.  A new type of socio-economic system , 1957 .

[10]  Il-Chul Moon,et al.  Simulation-based analyses of an evacuation from a metropolis during a bombardment , 2014, Simul..

[11]  Cathal O'Donoghue,et al.  Microsimulation and Public Policy Edited by Ann Harding , 1998, J. Artif. Soc. Soc. Simul..

[12]  Joshua M. Epstein,et al.  Generative Social Science: Studies in Agent-Based Computational Modeling (Princeton Studies in Complexity) , 2007 .

[13]  Robert D. Retherford,et al.  Very low fertility in Asia: is there a problem? Can it be solved? , 2010 .

[14]  David B. Fogel,et al.  An introduction to simulated evolutionary optimization , 1994, IEEE Trans. Neural Networks.

[15]  S. Morgan,et al.  Is low fertility a twenty-first-century demographic crisis? , 2003, Demography.

[16]  Il-Chul Moon,et al.  Impact of Population Relocation to City Commerce: Micro-Level Estimation with Validated Agent-Based Model , 2015, J. Artif. Soc. Soc. Simul..

[17]  Thomas C. Schelling,et al.  Dynamic models of segregation , 1971 .

[18]  Erez Hatna,et al.  Agent-Based Modeling of Householders’ Migration Behavior and Its Consequences , 2003 .

[19]  J. Schwartz,et al.  Theory of Self-Reproducing Automata , 1967 .

[20]  G. Nigel Gilbert,et al.  Simulation for the social scientist , 1999 .

[21]  E Van Imhoff,et al.  Microsimulation methods for population projection. , 1998, Population. English selection.