Study on the Influence IDs Model of the Structure and the Behavior Choice

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Abstract:

The complicated decision making problem is one of the important components for the study on the system of artificial intelligence area. This thesis, based on the Bayesian technology and decision-making theory, is going to optimize the traditional IDs model and improve the ability of expression of the model. and also by using the sum of individual utility function instead of the joint utility function to create the BP neural network to study the utility function structure of the IDs. The experimental result shows the method mentioned above is effective.

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1354-1357

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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