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Article Dans Une Revue Kinetic and Related Models Année : 2017

Balanced Growth Path Solutions of a Boltzmann Mean Field Game Model for Knowledge Growth

Résumé

In this paper we study balanced growth path solutions of a Boltzmann mean field game model proposed by Lucas et al [13] to model knowledge growth in an economy. Agents can either increase their knowledge level by exchanging ideas in learning events or by producing goods with the knowledge they already have. The existence of balanced growth path solutions implies exponential growth of the overall production in time. We proof existence of balanced growth path solutions if the initial distribution of individuals with respect to their knowledge level satisfies a Pareto-tail condition. Furthermore we give first insights into the existence of such solutions if in addition to production and knowledge exchange the knowledge level evolves by geometric Brownian motion.
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Dates et versions

hal-01267078 , version 1 (03-02-2016)

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Martin Burger, Alexander Lorz, Marie-Therese Wolfram. Balanced Growth Path Solutions of a Boltzmann Mean Field Game Model for Knowledge Growth. Kinetic and Related Models , 2017, ⟨10.3934/krm.2017005⟩. ⟨hal-01267078⟩
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