Description: Apriori data mining algorithms C# knowledge discovery in databases (Knowledge Discovery in Databases, KDD) is using the computer to automatically extract useful knowledge from the mass of information is an effective use of the new method of information has become the database field research focus. KDD research focuses on data mining. Data mining is extracted from a large database or data warehouse people are interested in knowledge, such knowledge is implicit, previously unknown potentially useful information. Mainly include: classification, regression analysis, clustering, association analysis [1] [5]. The extraction of association rules mainly for large transaction database. Association rules extraction need to repeat the scan database, and therefore it is essential to improve the efficiency of the algorithm.
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DMTEST
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Apriori 数据挖掘算法的C#实现.doc