A Neural Network Method for Cancellation Diagnostic Problem Solving
نویسندگان
چکیده
There are four types of diagnostic problems, among which cancellation diagnosis is the most diicult problem. In this paper, a neural network diagnosis model for solving cancellation diagnosis is presented. An important contribution of this paper is that the link weights of the network can be changed during network computing. The cancellation eeects among network nodes are represented by changing link weights so that the cancellation diagnosis can be performed.
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