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Journal of Artificial Societies and Social Simulation 4(2) (2001), īarthelemy, O.: The impact of the model structure in social simulations. Computational and Mathematical Organization Theory 1, 123–141 (1996)īarreteau, O., et al.: Role-playing games for opening the black box of multi-agent systems: method and lessons of its application to Senegal River Valley irrigated systems. This process is experimental and the keywords may be updated as the learning algorithm improves.Īxtell, R., et al.: Aligning Simulation Models: A Case Study and Results. These keywords were added by machine and not by the authors. An example multi-agent simulation of domestic water demand and social influence is described. This contrasts sharply with the KISS approach where one starts with the simplest possible model and only moves to a more complex one if forced to. Simplification is only applied if and when the model and evidence justify this. The KIDS approach entails one starts with the simulation model that relates to the target phenomena in the most straight-forward way possible, taking into account the widest possible range of evidence, including anecdotal accounts and expert opinion. A new approach is suggested under the slogan “Keep it Descriptive Stupid” (KIDS) that encapsulates a trend in increasingly descriptive agent-based social simulation.
