首页> 外文会议>AICI 2011;International conference on artificial intelligence and computational intelligence >Discovery of Direct and Indirect Sequential Patterns with Multiple Minimum Supports in Large Transaction Databases
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Discovery of Direct and Indirect Sequential Patterns with Multiple Minimum Supports in Large Transaction Databases

机译:在大型事务数据库中发现具有多个最小支持的直接和间接顺序模式

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Sequential patterns mining is an important research topic in data mining and knowledge discovery. The objective of mining sequential patterns is to find out frequent sequences based on the user-specified minimum support threshold, which implicitly assumes that all items in the data have similar probability distribution. This is often not the case in real-life applications. If the frequencies of items vary a great deal, we will suffer the dilemma called the rare item problem. In order to resolve the dilemma, an algorithm to discover sequential patterns with multiple minimum supports model is proposed, which can specify a different minimum item support for different item. The algorithm can not only discover sequential patterns formed between frequent sequences, but also discover sequential patterns formed either between frequent sequence and rare sequence or among rare sequences only. Moreover, an algorithm for mining direct and indirect sequential patterns with multiple minimum supports is designed simultaneously.
机译:顺序模式挖掘是数据挖掘和知识发现中的重要研究课题。挖掘顺序模式的目的是根据用户指定的最小支持阈值找出频繁的序列,该阈值隐式地假设数据中的所有项目都具有相似的概率分布。在实际应用中通常不是这种情况。如果物品的频率变化很大,我们将遭受称为稀有物品问题的困境。为了解决这一难题,提出了一种发现具有多个最小支持模型的顺序模式的算法,该算法可以为不同的物品指定不同的最小物品支持。该算法不仅可以发现在频繁序列之间形成的顺序模式,而且可以发现在频繁序列和稀有序列之间或仅在稀有序列之间形成的顺序模式。此外,同时设计了一种用于挖掘具有多个最小支持的直接和间接顺序模式的算法。

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