Abstract
Computational social science grows from several research traditions with roots in The Enlightenment and earlier origins in Aristotle’s comparative analysis of social systems. Extant standards of scientific quality and excellence have been inherited through the history and philosophy of science in terms of basic principles, such as formalization, testing, replication, and dissemination. More specifically, the properties of Truth, Beauty, and Justice proposed by C.A. Lave and J.G. March for mathematical social science are equally valid criteria for assessing quality in social simulation models. Helpful as such classic standards of quality may be, social computing adds new scientific features (complex systems, object-oriented simulations, network models, emergent dynamics) that require development as additional standards for judging quality. Social simulation models in particular (e.g., agent-based modeling) contribute further specific requirements for assessing quality. This paper proposes and discusses a set of dimensions for discerning quality in social simulations, especially agent-based models, beyond the traditional standards of verification and validation.
Prepared for the 9th Conference of the European Social Simulation Association, Warsaw School of Economics, Warsaw, Poland, September 16–20,2013. This paper was inspired by the First Workshop on Quality Commons, Maison de la Recherche, Paris, 28–29 January, 2010. Thanks to Petra Ahrweiler, Edmund Chattoe-Brown, Bruce Edmonds, Corinna Elsenbroich, Nigel Gilbert, David Hales, Dirk Helbing, Andreij Nowak, and Paul Ormerod for stimulating discussions at the Center for Mathematics and Analysis in the Social Sciences, University of Paris Sorbonne.
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Cioffi-Revilla, C. (2014). On the Quality of a Social Simulation Model: A Lifecycle Framework. In: Kamiński, B., Koloch, G. (eds) Advances in Social Simulation. Advances in Intelligent Systems and Computing, vol 229. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-39829-2_2
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