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Preference Modeling with Possibilistic Networks and Symbolic Weights: A Theoretical Study

机译:偏好建模与可能性网络和象征权重:理论研究

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The use of possibilistic networks for representing conditional preference statements on discrete variables has been proposed only recently. The approach uses non-instantiated possibility weights to define conditional preference tables. Moreover, additional information about the relative strengths of these symbolic weights can be taken into account. The fact that at best we have some information about the relative values of these weights acknowledges the qualitative nature of preference specification. These conditional preference tables give birth to vectors of symbolic weights that reflect the preferences that are satisfied and those that are violated in a considered situation. The comparison of such vectors may rely on different orderings: the ones induced by the product-based, or the minimum-based chain rule underlying the possibilistic network, the discrimin, or leximin refinements of the minimum-based ordering, as well as Pareto ordering, and the symmetric Pareto ordering that refines it. A thorough study of the relations between these orderings in presence of vector components that are symbolic rather numerical is presented. In particular, we establish that the product-based ordering and the symmetric Pareto ordering coincide in presence of constraints comparing pairs of symbolic weights. This ordering agrees in the Boolean case with the inclusion between the sets of preference statements that are violated. The symmetric Pareto ordering may be itself refined by the leximin ordering. The paper highlights the merits of product-based possibilistic networks for representing preferences and provides a comparative discussion with CP-nets and OCF-networks.
机译:最近,仅提出了用于代表离散变量的条件偏好语句的可能性网络。该方法使用非实例化的可能性权重来定义条件偏好表。此外,可以考虑有关这些符号权重的相对强度的附加信息。事实上,尽管我们有一些关于这些权重的相对值的信息,承认了偏好规范的定性性质。这些条件偏好表诞生了反映满足的偏好的象征权的载体,以及在被认为的情况下侵犯的偏好。这些矢量的比较可以依赖于不同的排序:由基于产品的基于产品的诱导或可能的基于最小的链规则,判别或基于最低限度的排序的leximin改进,以及帕累托排序,以及对对称的帕累托订购改进它。介绍了呈现符号相当数值的矢量分量存在下这些排序之间的关系的彻底研究。特别是,我们确定基于产品的排序和对称帕累托在比较符号权重对的约束时重合。此订单同意布尔案件,其中包含违反的偏好陈述集。 leximin排序可能本身可以完善对称的帕吻送单。本文突出了基于产品的可能性网络的优点,用于代表偏好,并提供与CP-Net和OCF网络的比较讨论。

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