The Relation Between Acausality and Interference in Quantum-Like Bayesian Networks

08/26/2015
by   Catarina Moreira, et al.
0

We analyse a quantum-like Bayesian Network that puts together cause/effect relationships and semantic similarities between events. These semantic similarities constitute acausal connections according to the Synchronicity principle and provide new relationships to quantum like probabilistic graphical models. As a consequence, beliefs (or any other event) can be represented in vector spaces, in which quantum parameters are determined by the similarities that these vectors share between them. Events attached by a semantic meaning do not need to have an explanation in terms of cause and effect.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset