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Abstraction-Guided Truncations for Stationary Distributions of Markov Population Models

Published 3 May 2021 in stat.ML, cs.SY, eess.SY, and q-bio.QM | (2105.01536v1)

Abstract: To understand the long-run behavior of Markov population models, the computation of the stationary distribution is often a crucial part. We propose a truncation-based approximation that employs a state-space lumping scheme, aggregating states in a grid structure. The resulting approximate stationary distribution is used to iteratively refine relevant and truncate irrelevant parts of the state-space. This way, the algorithm learns a well-justified finite-state projection tailored to the stationary behavior. We demonstrate the method's applicability to a wide range of non-linear problems with complex stationary behaviors.

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