The Application of Oracle Data Mining Technology in Classification of Disease Information

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Abstract:

The traditional medical information (diagnosis) system simply puts a lot of information stored, untreated, and accumulated over a long period, which makes the data volume surge. Thus the pressure of database increases, everyday retrieval efficiency becomes lower, and database can't play the role of an intelligent auxiliary. Data mining searches for wealth in information flooding. Aiming at the key problem in the practice of medical diagnosis, we hope to make use of the database mining technology of ID3 algorithm to optimize the traditional data processing, improve the traditional medical information for data classification, blend in statistics and theory of information retrieval technology and further improve the valid data in the role of medical diagnosis, so as to adapt to the hospital and the actual needs of individuals in the diagnosis of decision-making.

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Periodical:

Advanced Materials Research (Volumes 816-817)

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570-573

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Online since:

September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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