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Automating Knowledge Acquisition and Refinement for Decision Support: A Connectionist Inductive Inference Model

Identifieur interne : 003141 ( Main/Exploration ); précédent : 003140; suivant : 003142

Automating Knowledge Acquisition and Refinement for Decision Support: A Connectionist Inductive Inference Model

Auteurs : Pi Heng Deng [États-Unis]

Source :

RBID : ISTEX:879B094CF4710CDED0423CC1F6B1EAE68843F9FD

English descriptors

Abstract

An important application of expert systems technology is to provide support for nonstructured decision making. Usually, nonstructured decision making is characterized by heavy reliance on heuristic knowledge, which is very difficult to articulate or document, and therefore traditional knowledge acquisition approaches are not very successful. The quality and effectiveness of an expert system supporting unstructured decision making is affected when traditional knowledge acquisition approaches are used. To alleviate this problem a model is proposed that combines inductive inference and neural network computing, and an example is presented that illustrates the potential of this model in unstructured decision support.

Url:
DOI: 10.1111/j.1540-5915.1993.tb00479.x


Affiliations:


Links toward previous steps (curation, corpus...)


Le document en format XML

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   |texte=   Automating Knowledge Acquisition and Refinement for Decision Support: A Connectionist Inductive Inference Model
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