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arxiv: 1303.4532 · v2 · pith:QGRA4QNEnew · submitted 2013-03-19 · 💻 cs.DM · q-bio.QM

Markov chain aggregation and its applications to combinatorial reaction networks

classification 💻 cs.DM q-bio.QM
keywords aggregateschainctmcdistributionmarkovmeasuremodelsnetworks
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We consider a continuous-time Markov chain (CTMC) whose state space is partitioned into aggregates, and each aggregate is assigned a probability measure. A sufficient condition for defining a CTMC over the aggregates is presented as a variant of weak lumpability, which also characterizes that the measure over the original process can be recovered from that of the aggregated one. We show how the applicability of de-aggregation depends on the initial distribution. The application section is a major aspect of the article, where we illustrate that the stochastic rule-based models for biochemical reaction networks form an important area for usage of the tools developed in the paper. For the rule-based models, the construction of the aggregates and computation of the distribution over the aggregates are algorithmic. The techniques are exemplified in three case studies.

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