Efficient Mining of Non-Redundant Periodic Frequent Patterns

Michael Kofi Afriyie, V. M. Nofong, John Wondoh, Hamidu Abdel-Fatao
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引用次数: 2

Abstract

Periodic frequent patterns are frequent patterns which occur at periodic intervals in databases. They are useful in decision making where event occurrence intervals are vital. Traditional algorithms for discovering periodic frequent patterns, however, often report a large number of such patterns, most of which are often redundant as their periodic occurrences can be derived from other periodic frequent patterns. Using such redundant periodic frequent patterns in decision making would often be detrimental, if not trivial. This paper addresses the challenge of eliminating redundant periodic frequent patterns by employing the concept of deduction rules in mining and reporting only the set of non-redundant periodic frequent patterns. It subsequently proposes and develops a Non-redundant Periodic Frequent Pattern Miner (NPFPM) to achieve this purpose. Experimental analysis on benchmark datasets shows that NPFPM is efficient and can effectively prune the set of redundant periodic frequent patterns.
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非冗余周期频繁模式的高效挖掘
周期性频繁模式是数据库中以周期性间隔出现的频繁模式。在事件发生间隔至关重要的情况下,它们在决策制定中很有用。然而,用于发现周期频繁模式的传统算法通常报告大量这样的模式,其中大多数通常是冗余的,因为它们的周期性出现可以从其他周期频繁模式中派生出来。在决策制定中使用这种冗余的周期性频繁模式,即使不是微不足道,也往往是有害的。本文通过在挖掘和报告非冗余周期频繁模式集时采用演绎规则的概念,解决了消除冗余周期频繁模式的挑战。随后提出并开发了一种非冗余周期频繁模式挖掘器(NPFPM)来实现这一目标。在基准数据集上的实验分析表明,NPFPM能够有效地剔除冗余的周期频繁模式集。
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