Application of Data Mining Technology for Charging System in Hospital

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Along with the development of artificial intelligent and computer science, data mining has become a powerful analytical tool to obtain the interested and important information from the amount of noisy and fuzzy data. In this paper, data mining technology is applied to the charging system in hospital. Usually, many unnecessary medical requirements are added to the treatment of patients, which could result in the extra pay and time for such treatment. Thus, this paper presents the definition of one-fee system in hospital for the common disease cases by applying data mining technology, in which, artificial neural networks and association rules (e.g., apriori algorithm) are presented. The presented one-fee definition might provide a reference for the charging system in hospital.

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1856-1859

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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