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An efficient approach to mine flexible periodic patterns in time series databases

机译:在时间序列数据库中挖掘灵活周期模式的有效方法

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摘要

Periodic pattern mining in time series databases is one of the most interesting data mining problems that is frequently appeared in many real-life applications. Some of the existing approaches find fixed length periodic patterns by using suffix tree structure, i.e., unable to mine flexible patterns. One of the existing approaches generates periodic patterns by skipping intermediate events, i.e., flexible patterns, using apriori based sequential pattern mining approach. Since, apriori based approaches suffer from the issues of huge amount of candidate generation and large percentage of false pattern pruning, we propose an efficient algorithm FPPM (flexible Periodic Pattern Mining) using suffix trie data structure. The proposed algorithm can capture more effective variable length flexible periodic patterns by neglecting unimportant or undesired events and considering only the important events in an efficient way. To the best of our knowledge, ours is the first approach that simultaneously handles various starting position throughout the sequences, flexibility among events in the mined patterns and interactive tuning of period values on the go. Complexity analysis of the proposed approach and comparison with existing approaches along with analytical comparison on various issues have been performed. As well as extensive experimental analyses are conducted to evaluate the performance of proposed FPPM algorithm using real-life datasets. The proposed approach outperforms existing algorithms in terms of processing time, scalability, and quality of mined patterns.
机译:时间序列数据库中的定期模式挖掘是最有趣的数据挖掘问题之一,在许多实际应用中经常出现。一些现有方法通过使用后缀树结构找到固定长度的周期性模式,即无法挖掘灵活模式。现有方法之一是使用基于先验的顺序模式挖掘方法,通过跳过中间事件(即,灵活模式)来生成周期性模式。由于基于先验的方法存在大量候选生成和大量错误模式修剪的问题,因此我们提出了一种使用后缀特里数据结构的高效算法FPPM(灵活周期性模式挖掘)。所提出的算法可以通过忽略不重要或不想要的事件并以有效方式仅考虑重要事件来捕获更有效的可变长度灵活周期模式。据我们所知,我们是第一种同时处理整个序列中各种起始位置,挖掘模式中事件之间的灵活性以及行进中的周期值进行交互式调整的第一种方法。已对提议的方法进行了复杂性分析,并与现有方法进行了比较,并对各种问题进行了分析比较。以及进行大量的实验分析,以使用实际数据集评估提出的FPPM算法的性能。所提出的方法在处理时间,可伸缩性和挖掘模式的质量方面优于现有算法。

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