A novel node-partitioning lumping scheme reduces arbitrary epidemic models on networks to approximate Markov Population Models with smaller state spaces.
Approximate lumpability for Markovian agent-based models using local symmetries
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abstract
We study a Markovian agent-based model (MABM) in this paper. Each agent is endowed with a local state that changes over time as the agent interacts with its neighbours. The neighbourhood structure is given by a graph. In a recent paper [Simon et al. 2011], the authors used the automorphisms of the underlying graph to generate a lumpable partition of the joint state space ensuring Markovianness of the lumped process for binary dynamics. However, many large random graphs tend to become asymmetric rendering the automorphism-based lumping approach ineffective as a tool of model reduction. In order to mitigate this problem, we propose a lumping method based on a notion of local symmetry, which compares only local neighbourhoods of vertices. Since local symmetry only ensures approximate lumpability, we quantify the approximation error by means of Kullback-Leibler divergence rate between the original Markov chain and a lifted Markov chain. We prove the approximation error decreases monotonically. The connections to fibrations of graphs are also discussed.
fields
cs.SI 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Reducing Spreading Processes on Networks to Markov Population Models
A novel node-partitioning lumping scheme reduces arbitrary epidemic models on networks to approximate Markov Population Models with smaller state spaces.