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Based on whether data imprecision is considered, Chau, et.al [4] propose that data mining methods can be classified through a taxonomy. Common data mining techniques such as association rule mining, data classifica tion and data clustering need to be modified in order to handle uncertain data. Moreover, there are two types of data clustering: hard

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