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Association rules mining in vertically partitioned databases

机译:垂直分区数据库中的关联规则挖掘

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Privacy concerns have become an important issue in Data Mining. This paper deals with the problem of association rule mining from distributed vertically partitioned data with the goal of preserving the confidentiality of each database. Each site holds some attributes of each transaction, and the sites wish to work together to find globally valid association rules without revealing individual transaction data. This problem occurs, for example, when the same users access several electronic shops purchasing different items in each. We present two algorithms for discovering frequent itemsets and for calculating the confidence of the rules. We then analyze the algorithms privacy properties, and compare them to other published algorithms.
机译:隐私问题已成为数据挖掘中的重要问题。本文讨论了从分布的垂直分区数据中挖掘关联规则的问题,目的是保护每个数据库的机密性。每个站点都具有每个交易的某些属性,这些站点希望一起工作以查找全局有效的关联规则,而无需透露单个交易数据。例如,当相同的用户访问几个在每个商店中购买不同物品的电子商店时,就会出现此问题。我们提出了两种发现频繁项集和计算规则置信度的算法。然后,我们分析算法的隐私属性,并将其与其他已发布的算法进行比较。

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