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107515

Efficient streaming data association rule mining

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Last updated: 26 Dec 2024

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Abstract

Recently, number of applications including social networks, stock market trading and sensor network devices generate a massive amount of data in the streaming form. Streaming data have characteristics different from static data, such as streaming data arrives continuously at high speed with huge amount. Mining and discovering information from these data is a non-trivial issue. Most of traditional algorithms have limitations to deal with streaming data, so there are new issues raised and need to be taken into consideration while developing techniques for mining association rules from such data. In this paper, a technique to mine an association rules from streaming data efficiently is proposed. The proposed technique develops a tree structure called Fast Update Frequent Pattern Tree (FUFP-Tree) that reduce the number of traversing between tree nodes in both inserting a new transaction and extracting an association rules between items. Also, to avoid congestion during inserting incoming streaming data to FUFP-Tree, a sliding window approach is used to divide incoming data equally to all available windows. The complexity and the performance of this technique are investigated, and a dataset of storehouse is used to test the proposed technique and measure its efficiency. The efficiency of the proposed technique is compared with other most related algorithms.

DOI

10.21608/fcihib.2019.107515

Keywords

Data mining, Association Rules, Streaming Data, FUFP Tree

Authors

First Name

Amr

Last Name

Aly Abd Elaty

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First Name

Rashed

Last Name

Salem

MiddleName

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Affiliation

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Orcid

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First Name

Hatem

Last Name

Abdel Kader

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Volume

1

Article Issue

1

Related Issue

16264

Issue Date

2019-01-01

Receive Date

2019-01-19

Publish Date

2019-01-19

Page Start

35

Page End

41

Print ISSN

2537-0901

Online ISSN

2535-1397

Link

https://fcihib.journals.ekb.eg/article_107515.html

Detail API

https://fcihib.journals.ekb.eg/service?article_code=107515

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4

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المقالة الأصلية

Type Code

1,411

Publication Type

Journal

Publication Title

النشرة المعلوماتية في الحاسبات والمعلومات

Publication Link

https://fcihib.journals.ekb.eg/

MainTitle

Efficient streaming data association rule mining

Details

Type

Article

Created At

23 Jan 2023