ICC   25427
INSTITUTO DE INVESTIGACION EN CIENCIAS DE LA COMPUTACION
Unidad Ejecutora - UE
artículos
Título:
Bayesian network semantics for Petri nets
Autor/es:
BRUNI, ROBERTO; MONTANARI, UGO; MELGRATTI, HERNÁN
Revista:
THEORETICAL COMPUTER SCIENCE
Editorial:
ELSEVIER SCIENCE BV
Referencias:
Año: 2020 vol. 807 p. 95 - 113
ISSN:
0304-3975
Resumen:
Recent work by the authors equips Petri occurrence nets (PN) with probability distributions which fully replace nondeterminism. To avoid the so-called confu- sion problem, the construction imposes additional causal dependencies which restrict choices within certain subnets called structural branching cells (s-cells). Bayesian nets (BN) are usually structured as partial orders where nodes define conditional probability distributions. In the paper, we unify the two structures in terms of Symmetric Monoidal Categories (SMC), so that we can apply to PN ordinary analysis techniques developed for BN. Interestingly, it turns out that PN which cannot be SMC-decomposed are exactly s-cells. This result confirms the importance for Petri nets of both SMC and s-cells.