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Maintaining Preference Networks That Adapt to Changing Preferences

机译:维护适应不断变化的偏好的偏好网络

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Decision making can be more difficult with an enormous amount of information, not only for humans but also for automated decision making processes. Although most user preference elicitation models have been developed based on the assumption that user preferences are stable, user preferences may change in the long term and may evolve with experience, resulting in dynamic preferences. Therefore, in this paper, we describe a model called the dynamic preference network (DPN) that is maintained using an approach that does not require the entire preference graph to be rebuilt when a previously-learned preference is changed, with efficient algorithms to add new preferences and to delete existing preferences. DPNs are shown to outperform existing algorithms for insertion, especially for large numbers of attributes and for dense graphs. They do have some shortcomings in the case of deletion, but only when there is a small number of attributes or when the graph is particularly dense.
机译:拥有大量信息的决策可能会变得更加困难,不仅对于人类,而且对于自动化决策过程也是如此。尽管大多数用户偏好启发模型都是基于用户偏好稳定的假设而开发的,但是用户偏好可能会长期变化并且会随着经验的发展而变化,从而导致动态偏好。因此,在本文中,我们描述了一种称为动态偏好网络(DPN)的模型,该模型使用一种方法进行维护,该方法不需要在先前学习的偏好发生更改时就可以重建整个偏好图,并使用有效的算法来添加新的首选项并删除现有的首选项。显示DPN的性能优于现有的插入算法,尤其是对于大量属性和稠密图形而言。在删除的情况下,它们确实有一些缺点,但仅当属性数量很少或图形特别密集时才存在。

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