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Comparing the notions of optimality in CP-nets, strategic games and soft constraints

Annals of Mathematics and Artificial Intelligence (AMAI), 2007
Abstract

The notion of optimality naturally arises in many areas of applied mathematics and computer science concerned with decision making. Here we consider this notion in the context of three formalisms used for different purposes in reasoning about multi-agent systems: strategic games, CP-nets, and soft constraints. To relate the notions of optimality in these formalisms we introduce a natural qualitative modification of the notion of a strategic game. We show then that the optimal outcomes of a CP-net are exactly the Nash equilibria of an appropriately defined strategic game. This allows us to use the techniques of game theory to search for optimal outcomes of CP-nets and vice-versa, to use techniques developed for CP-nets to search for Nash equilibria of the considered games. Then, we relate the notion of optimality used in the area of soft constraints to that used in a generalization of strategic games, called graphical games. We show that for a class of soft constraints that includes weighted constraints every optimal solution is a Nash equilibrium. On the other hand, the notion that coincides in general with optimality for soft constraints is that of Pareto efficient joint strategy.

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