An Algebraic Graphical Model for Decision with Uncertainties, Feasibilities, and Utilities
C. Pralet, T. Schiex, G. Verfaillie

TL;DR
This paper introduces the PFU algebraic graphical model that unifies various decision-making formalisms involving uncertainties, feasibilities, and utilities, providing a comprehensive framework with generic algorithms.
Contribution
It develops a unified algebraic graphical framework that encompasses existing formalisms and introduces new models for decision making under uncertainty, with generic algorithms.
Findings
Unifies multiple decision formalism frameworks.
Provides generic algorithms for decision queries.
Includes unpublished frameworks like possibilistic influence diagrams.
Abstract
Numerous formalisms and dedicated algorithms have been designed in the last decades to model and solve decision making problems. Some formalisms, such as constraint networks, can express "simple" decision problems, while others are designed to take into account uncertainties, unfeasible decisions, and utilities. Even in a single formalism, several variants are often proposed to model different types of uncertainty (probability, possibility...) or utility (additive or not). In this article, we introduce an algebraic graphical model that encompasses a large number of such formalisms: (1) we first adapt previous structures from Friedman, Chu and Halpern for representing uncertainty, utility, and expected utility in order to deal with generic forms of sequential decision making; (2) on these structures, we then introduce composite graphical models that express information via variables…
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