Syntactic Markovian Bisimulation for Chemical Reaction Networks
Luca Cardelli, Mirco Tribastone, Max Tschaikowski, Andrea, Vandin

TL;DR
This paper introduces Syntactic Markovian Bisimulation (SMB), a novel method for reducing the complexity of stochastic chemical reaction networks by identifying lumpable partitions directly from the network structure, enabling efficient analysis.
Contribution
The paper develops SMB, a structural bisimulation for CRNs that allows polynomial-time computation of maximal lumpable partitions and direct derivation of reduced models, improving analysis efficiency.
Findings
SMB significantly reduces model size in literature examples.
The algorithm computes the largest SMB efficiently in polynomial time.
SMB aligns with forward CRN bisimulation for ODE semantics.
Abstract
In chemical reaction networks (CRNs) with stochastic semantics based on continuous-time Markov chains (CTMCs), the typically large populations of species cause combinatorially large state spaces. This makes the analysis very difficult in practice and represents the major bottleneck for the applicability of minimization techniques based, for instance, on lumpability. In this paper we present syntactic Markovian bisimulation (SMB), a notion of bisimulation developed in the Larsen-Skou style of probabilistic bisimulation, defined over the structure of a CRN rather than over its underlying CTMC. SMB identifies a lumpable partition of the CTMC state space a priori, in the sense that it is an equivalence relation over species implying that two CTMC states are lumpable when they are invariant with respect to the total population of species within the same equivalence class. We develop an…
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