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AMADEUS: an adaptive multi-agent system to learn a user’s recurring actions in ambient systems

机译:AMADEUS:一种自适应多代理系统,用于学习用户在环境系统中的重复动作

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Ambient systems are characterized by their dynamics and their huge complexity. An important issue in this field is their capability to provide a relevant behaviour in order to satisfy users involved. Multi-agent systems, because of their ability to deal with dynamic, distributed and not deterministic environments, seem to be very promising to solve adaptation problems in ambient systems. The objective of our study is to propose Amadeus, a system able to learn the user’s behaviour in order to perform his recurrent actions on his behalf, independently of the ambient system in which it is applied. The originality of our contribution is to be generic and to promote a process able to learn at runtime without any prior learning phase and able to filter useful data for characterizing users' context.
机译:环境系统的特点是其动态性和巨大的复杂性。该领域的一个重要问题是他们提供相关行为的能力,以使所涉及的用户满意。由于多主体系统能够处理动态,分布式而不是确定性的环境,因此解决环境系统中的适应性问题似乎非常有前途。我们研究的目的是提出一种Amadeus,该系统能够了解用户的行为以代表他执行其重复动作,而与使用该系统的环境系统无关。我们的贡献是独具匠心的,旨在促进能够在运行时进行学习的过程,而无需任何先前的学习阶段,并且能够过滤出有用的数据以表征用户的环境。

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