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

page 1

page 2

page 3

page 4

research
07/16/2018

Introducing Quantum-Like Influence Diagrams for Violations of the Sure Thing Principle

It is the focus of this work to extend and study the previously proposed...
research
09/30/2014

Interference Effects in Quantum Belief Networks

Probabilistic graphical models such as Bayesian Networks are one of the ...
research
05/26/2020

Experimental evaluation of quantum Bayesian networks on IBM QX hardware

Bayesian Networks (BN) are probabilistic graphical models that are widel...
research
10/02/2017

The Dutch's Real World Financial Institute: Introducing Quantum-Like Bayesian Networks as an Alternative Model to deal with Uncertainty

In this work, we analyse and model a real life financial loan applicatio...
research
02/07/2018

Unsupervised word sense disambiguation in dynamic semantic spaces

In this paper, we are mainly concerned with the ability to quickly and a...
research
09/08/2017

Uncertainty measurement with belief entropy on interference effect in Quantum-Like Bayesian Networks

Social dilemmas have been regarded as the essence of evolution game theo...
research
05/09/2012

The Infinite Latent Events Model

We present the Infinite Latent Events Model, a nonparametric hierarchica...

Please sign up or login with your details

Forgot password? Click here to reset