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SmartMiner: a depth first algorithm guided by tail information for mining maximal frequent itemsets

机译:SmartMiner:一种基于尾部信息的深度优先算法,用于挖掘最大频繁项集

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Maximal frequent itemsets (MR) are crucial to many tasks in data mining. Since the MaxMiner algorithm first introduced enumeration trees for mining MR in 1998, several methods have been proposed to use depth first search to improve performance. To further improve the performance of mining MR, we proposed a technique that takes advantage of the information gathered from previous steps to discover new MR. More specifically, our algorithm called SmartMiner gathers and passes tail information and uses a heuristic select function which uses the tail information to select the next node to explore. Compared with Mafia and GenMax, SmartMiner generates a smaller search tree, requires a smaller number of support counting, and does not require superset checking. Using the datasets Mushroom and Connect, our experimental study reveals that SmartMiner generates the same MFI as Mafia and GenMax, but yields an order of magnitude improvement in speed.
机译:最大频繁项集(MR)对于数据挖掘中的许多任务至关重要。自从MaxMiner算法于1998年首次引入枚举树来挖掘MR以来,已经提出了几种使用深度优先搜索来提高性能的方法。为了进一步提高挖掘MR的性能,我们提出了一种利用先前步骤中收集的信息来发现新MR的技术。更具体地说,我们称为SmartMiner的算法收集并传递尾部信息,并使用启发式选择功能,该功能使用尾部信息来选择要探索的下一个节点。与黑手党和GenMax相比,SmartMiner生成的搜索树更小,支持计数更少,并且不需要超集检查。使用数据集Mushroom and Connect,我们的实验研究表明,SmartMiner产生的黑手党与黑手党和GenMax相同,但速度却提高了一个数量级。

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