Mining sequential patterns

R. Agrawal, R. Srikant
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引用次数: 6043

Abstract

We are given a large database of customer transactions, where each transaction consists of customer-id, transaction time, and the items bought in the transaction. We introduce the problem of mining sequential patterns over such databases. We present three algorithms to solve this problem, and empirically evaluate their performance using synthetic data. Two of the proposed algorithms, AprioriSome and AprioriAll, have comparable performance, albeit AprioriSome performs a little better when the minimum number of customers that must support a sequential pattern is low. Scale-up experiments show that both AprioriSome and AprioriAll scale linearly with the number of customer transactions. They also have excellent scale-up properties with respect to the number of transactions per customer and the number of items in a transaction.<>
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挖掘顺序模式
我们有一个大型的客户事务数据库,其中每个事务由客户id、事务时间和事务中购买的物品组成。我们介绍了在这样的数据库上挖掘顺序模式的问题。我们提出了三种算法来解决这个问题,并使用合成数据对它们的性能进行了实证评估。提出的两种算法,AprioriSome和AprioriAll,具有相当的性能,尽管在必须支持顺序模式的最小客户数量较低时,AprioriSome的性能稍好一些。放大实验表明,AprioriSome和AprioriAll都随客户交易数量线性扩展。它们在每个客户的交易数量和交易中的物品数量方面也具有出色的缩放特性。
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