A Neural Network Model for Diagnostic Problem Solving with Causal Chaining
نویسندگان
چکیده
Two layer causal networks are limited for representing real diagnostic problems. In this paper, a neural network diagnosis method based on a multiple layer causal network is proposed. Multiple layer networks have the power to represent complex diagnostic problems. Therefore, the method proposed in this paper is more practical for real world diagnostic problem solving than the method proposed in 4, 5] that considers only two layer networks.
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