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Self-Adaptation of a Learnt Behaviour by Detecting and by Managing User's Implicit Contradictions

机译:通过检测和管理用户的内在矛盾来对学习的行为进行自适应

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This paper tackles the issue of ambient systems adaptation to users' needs while the environment and users' preferences evolve continuously. We propose the adaptive multi-agent system Amadeus whose goal is to learn from users' actions and contexts how to perform actions on behalf of the users in similar contexts. However, considering the possible changes of users preferences, a previously learnt behaviour may become misfit. So, Amadeus must be able to observe if its actions on the system are contradicted by the users or not, without requiring any explicit feedback. The aim of this paper is to present the introspection capabilities of Amadeus in order to detect users contradictions and to self-adapt its behaviour at runtime. These mechanisms are then evaluated through a case study.
机译:本文解决了环境系统适应用户需求的问题,同时环境和用户的喜好不断发展。我们提出了自适应多代理系统Amadeus,其目标是从用户的行为和上下文中学习如何在相似的上下文中代表用户执行操作。但是,考虑到用户偏好的可能变化,先前学习的行为可能变得不合适。因此,Amadeus必须能够观察其在系统上的操作是否受到用户的抵触,而无需任何明确的反馈。本文的目的是介绍Amadeus的自省功能,以便检测用户矛盾并在运行时自适应其行为。然后通过案例研究评估这些机制。

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