A note on perfect simulation for exponential random graph models
classification
📊 stat.CO
keywords
algorithmchainexponentialgraphmarkovperfectrandomsimulation
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In this paper we propose a perfect simulation algorithm for the Exponential Random Graph Model, based on the Coupling From The Past method of Propp & Wilson (1996). We use a Glauber dynamics to construct the Markov Chain and we prove the monotonicity of the ERGM for a subset of the parametric space. We also obtain an upper bound on the running time of the algorithm that depends on the mixing time of the Markov chain.
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