Title :
Uncertainty and Inference in Agent-Based Models
Author :
Bobashev, Georgiy V. ; Morris, Robert J.
Author_Institution :
Stat. & Epidemiology Div., RTI Int., Research Triangle Park, NC, USA
Abstract :
Agent-Based Models (ABMs) can be used to quantify future risks by projecting observable behavior into the future. This can be achieved by simulating a hypothetical longitudinal study based on cross-sectional data and estimating quantities on dynamic risks (e.g., relative hazard). Such an approach, however, requires assessment of the variation of the estimates, which would naturally have a higher variance than would be achieved in a real longitudinal study. We present a methodology that considers rigorous statistical measurements such as standard errors and uncertainty associated with the fact that the analyzed longitudinal data are a projection of the cross-sectional survey. We illustrate the use of our approach in simulated and real studies.
Keywords :
data analysis; error analysis; inference mechanisms; multi-agent systems; statistical analysis; uncertainty handling; agent based model; dynamic risk; hypothetical longitudinal study; longitudinal data analysis; statistical measurement; uncertainty; Computational modeling; Data models; Drugs; Human immunodeficiency virus; Mathematical model; Uncertainty; Agent-based models; cross-sectonal; longitudinal study; regression.; standard error; uncertainty;
Conference_Titel :
Advances in System Simulation (SIMUL), 2010 Second International Conference on
Conference_Location :
Nice
Print_ISBN :
978-1-4244-7783-8
Electronic_ISBN :
978-0-7695-4142-6
DOI :
10.1109/SIMUL.2010.35