Mining general temporal association rules for items with different exhibition periods

Cheng-Yue Chang, Ming-Syan Chen, Chang-Hung Lee
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引用次数: 103

Abstract

In this paper we explore a new model of mining general temporal association rules from large databases where the exhibition periods of the items are allowed to be different from one to another. Note that in this new model, the downward closure property which all prior Apriori-based algorithms relied upon to attain good efficiency is no longer valid. As a result, how to efficiently generate candidate itemsets form large databases has become the major challenge. To address this issue, we develop an efficient algorithm, referred to as algorithm SPF (standing for Segmented Progressive Filter) in this paper The basic idea behind SPF is to first segment the database into sub-databases in such a way that items in each sub-database will have either the common starting time or the common ending time. Then, for each sub-database, SPF progressively filters candidate 2-itemsets with cumulative filtering thresholds either forward or backward in time. This feature allows SPF of adopting the scan reduction technique by generating all candidate k-itemsets (k>2) from candidate 2-itemsets directly. The experimental results show that algorithm SPF significantly outperforms other schemes which are extended from prior methods in terms of the execution time and scalability.
挖掘具有不同展期的物品的通用时间关联规则
在本文中,我们探索了一种从大型数据库中挖掘通用时态关联规则的新模型,该模型允许项目的展示周期彼此不同。请注意,在这个新模型中,所有先前基于apriori的算法所依赖的向下闭包特性不再有效。因此,如何从大型数据库中高效地生成候选项目集成为当前的主要挑战。为了解决这个问题,我们开发了一种高效的算法,在本文中称为算法SPF(代表分段渐进滤波)。SPF背后的基本思想是首先将数据库分割成子数据库,这样每个子数据库中的项目将具有共同的开始时间或共同的结束时间。然后,对于每个子数据库,SPF逐步过滤候选的2-itemset,其累积过滤阈值在时间上向前或向后。该特性允许SPF直接从候选2项集生成所有候选k项集(k>2),从而采用扫描缩减技术。实验结果表明,SPF算法在执行时间和可扩展性方面明显优于其他从先前方法扩展而来的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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