Learning by problem processors: Adaptive decision support systems

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In this paper, we describe the potential advantages of developing Adaptive Decision Support Systems (Adaptive DSSs) for the efficient and/or effective solution of problems in complex domains. The problem processing components of DSSs that subscribe to existing DSS paradigms typically utilize supervised learning strategies to acquire problem processing knowledge (PPK). On the other hand, the problem processor of an Adaptive DSS utilizes unsupervised inductive learning, perhaps in addition to other forms of learning, to acquire some of the necessary PPK. Thus, Adaptive DSSs are, to some extent, self-teaching systems with comparatively less reliance on external agents for PPK acquisition. To illustrate these notions, we examine an application in the domain concerned with the scheduling of jobs in flexible manufacturing systems (FMSs). We provide an architectural description for an Adaptive DSS for supporting static scheduling decisions in FMSs. We illustrate key problem processing features of the system using an example. A prototype system, based on this architecture, is currently under implementation.

论文关键词:Decision support systems,Machine learning,Adaptive DSSs,Flexible manufacturing systems

论文评审过程:Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0167-9236(93)90032-X