Research of the Association Rules Based on Cloud Database

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Abstract:

There is an immense amount of data in the cloud database and among these data, much potential and valuable knowledge are implicit. The key point is to discover and pick out the useful knowledge, and to do so automatically. In this paper, the data model of the cloud database is analyzed. The relationships among different areas in the data are then analyzed, from which the new knowledge can be found. The basic data mining model based on the cloud database is defined, and the discovery algorithm is presented.

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1939-1942

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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