Introducing Quantum-Like Influence Diagrams for Violations of the Sure Thing Principle
July 16, 2018 Β· Declared Dead Β· π Quantum Interaction
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Authors
Catarina Moreira, Andreas Wichert
arXiv ID
1807.06142
Category
cs.AI: Artificial Intelligence
Citations
2
Venue
Quantum Interaction
Last Checked
4 months ago
Abstract
It is the focus of this work to extend and study the previously proposed quantum-like Bayesian networks to deal with decision-making scenarios by incorporating the notion of maximum expected utility in influence diagrams. The general idea is to take advantage of the quantum interference terms produced in the quantum-like Bayesian Network to influence the probabilities used to compute the expected utility of some action. This way, we are not proposing a new type of expected utility hypothesis. On the contrary, we are keeping it under its classical definition. We are only incorporating it as an extension of a probabilistic graphical model in a compact graphical representation called an influence diagram in which the utility function depends on the probabilistic influences of the quantum-like Bayesian network. Our findings suggest that the proposed quantum-like influence digram can indeed take advantage of the quantum interference effects of quantum-like Bayesian Networks to maximise the utility of a cooperative behaviour in detriment of a fully rational defect behaviour under the prisoner's dilemma game.
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