HOVA-FPPM: Flexible Periodic Pattern Mining in Time Series Databases Using Hashed Occurrence Vectors and Apriori Approach

Author:

Javed Muhammad Fasih1,Nawaz Waqas2ORCID,Khan Kifayat Ullah1ORCID

Affiliation:

1. IKMA Lab, Department of Computer Science, National University of Computer and Emerging Sciences, Islamabad, Pakistan

2. Department of Computer and Information Systems, Islamic University of Madinah, Al-Madinah, Saudi Arabia

Abstract

Finding flexible periodic patterns in a time series database is nontrivial due to irregular occurrence of unimportant events, which makes it intractable or computationally intensive for large datasets. There exist various solutions based on Apriori, projection, tree, and other techniques to mine these patterns. However, the existence of constant size tree structure, i.e., suffix tree, with extra information in memory throughout the mining process, redundant and invalid pattern generation, limited types of mined flexible periodic patterns, and repeated traversal over tree data structure for pattern discovery, results in unacceptable space and time complexity. In order to overcome these issues, we introduce an efficient approach called HOVA-FPPM based on Apriori approach with hashed occurrence vectors to find all types of flexible periodic patterns. We do not rely on complex tree structure rather manage necessary information in a hash table for efficient lookup during the mining process. We measured the performance of our proposed approach and compared the results with the baseline approach, i.e., FPPM. The results show that our approach requires lesser time and space, regardless of the data size or period value.

Funder

Islamic University of Madinah

Publisher

Hindawi Limited

Subject

Computer Science Applications,Software

Reference35 articles.

1. A survey of sequential pattern mining;P. Fournier-Viger;Data Science and Pattern Recognition,2017

2. Detection of time series patterns and periodicity of cloud computing workloads;C. St-Onge;Future Generation Computer Systems,2020

3. A review on time series data mining;T.-c. Fu;Engineering Applications of Artificial Intelligence,2011

4. A comprehensive study on periodicity mining algorithms;M. Patel

5. Detecting multiple periods and periodic patterns in event time sequences;Q. Yuan

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