posted on 2018-10-16, 10:45authored byBenjamin Cabrera, Tobias Heindel, Reiko Heckel, Barbara König
The paper extends Bayesian networks (BNs) by a mechanism for dynamic changes to the probability distributions represented by BNs. One application scenario is the process of knowledge acquisition of an observer interacting with a system. In particular, the paper considers condition/event nets where the observer’s knowledge about the current marking is a probability distribution over markings. The observer can interact with the net to deduce information about the marking by requesting certain transitions to fire and observing their success or failure. Aiming for an e cient implementation of dynamic changes to probability distributions of BNs, we consider a modular form of networks that form the arrows of a free PROP with a commutative comonoid structure, also known as term graphs. The algebraic structure of such PROPs supplies us with a compositional semantics that functorially maps BNs to their underlying probability distribution and, in particular, it provides a convenient means to describe structural updates of networks.
Funding
Research partially supported by the Deutsche Forschungsgemeinschaft (DFG) under
grant No. GRK 2167, Research Training Group “User-Centred Social Media”.
History
Citation
Leibniz International Proceedings in Informatics, LIPIcs, 2018, Article No. 27; pp. 27:1–27:17
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Informatics
Source
CONCUR 2018 The 29th International Conference on Concurrency Theory Beijing, China