Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy

To find the emerging patterns (EPs) in streaming transaction data, the streaming is first divided into some time windows containing a number of transactions. Itemsets are generated from transactions in each window, and then the emergence of itemsets is evaluated between two windows. In the tilted‐ti...

Full description

Bibliographic Details
Main Authors: Tubagus Mohammad Akhriza, Yinghua Ma, Jianhua Li
Format: Article
Language:English
Published: Electronics and Telecommunications Research Institute (ETRI) 2018-02-01
Series:ETRI Journal
Subjects:
Online Access:https://doi.org/10.4218/etrij.18.0117.0175
id doaj-9822d2b0ed744c37891446b538aa1f7e
record_format Article
spelling doaj-9822d2b0ed744c37891446b538aa1f7e2020-11-25T03:05:37ZengElectronics and Telecommunications Research Institute (ETRI)ETRI Journal1225-64632233-73262018-02-0140111112110.4218/etrij.18.0117.017510.4218/etrij.18.0117.0175Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and AccuracyTubagus Mohammad AkhrizaYinghua MaJianhua LiTo find the emerging patterns (EPs) in streaming transaction data, the streaming is first divided into some time windows containing a number of transactions. Itemsets are generated from transactions in each window, and then the emergence of itemsets is evaluated between two windows. In the tilted‐time windows model (TTWM), it is assumed that people need support data with finer accuracy from the most recent windows, while accepting coarser accuracy from older windows. Therefore, a limited array's elements are used to maintain all support data in a way that condenses old windows by merging them inside one element. The capacity of elements that accommodates the windows inside is modeled using a particular number sequence. However, in a stream, as new data arrives, the current array updating mechanisms lead to many null elements in the array and cause data incompleteness and inaccuracy problems. Two models derived from TTWM, logarithmic TTWM and Fibonacci windows model, also inherit the same problems. This article proposes a novel push‐front Fibonacci windows model as a solution, and experiments are conducted to demonstrate its superiority in finding more EPs compared to other models.https://doi.org/10.4218/etrij.18.0117.0175Data stream miningEmerging patternsTime window models
collection DOAJ
language English
format Article
sources DOAJ
author Tubagus Mohammad Akhriza
Yinghua Ma
Jianhua Li
spellingShingle Tubagus Mohammad Akhriza
Yinghua Ma
Jianhua Li
Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
ETRI Journal
Data stream mining
Emerging patterns
Time window models
author_facet Tubagus Mohammad Akhriza
Yinghua Ma
Jianhua Li
author_sort Tubagus Mohammad Akhriza
title Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
title_short Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
title_full Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
title_fullStr Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
title_full_unstemmed Novel Push‐Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy
title_sort novel push‐front fibonacci windows model for finding emerging patterns with better completeness and accuracy
publisher Electronics and Telecommunications Research Institute (ETRI)
series ETRI Journal
issn 1225-6463
2233-7326
publishDate 2018-02-01
description To find the emerging patterns (EPs) in streaming transaction data, the streaming is first divided into some time windows containing a number of transactions. Itemsets are generated from transactions in each window, and then the emergence of itemsets is evaluated between two windows. In the tilted‐time windows model (TTWM), it is assumed that people need support data with finer accuracy from the most recent windows, while accepting coarser accuracy from older windows. Therefore, a limited array's elements are used to maintain all support data in a way that condenses old windows by merging them inside one element. The capacity of elements that accommodates the windows inside is modeled using a particular number sequence. However, in a stream, as new data arrives, the current array updating mechanisms lead to many null elements in the array and cause data incompleteness and inaccuracy problems. Two models derived from TTWM, logarithmic TTWM and Fibonacci windows model, also inherit the same problems. This article proposes a novel push‐front Fibonacci windows model as a solution, and experiments are conducted to demonstrate its superiority in finding more EPs compared to other models.
topic Data stream mining
Emerging patterns
Time window models
url https://doi.org/10.4218/etrij.18.0117.0175
work_keys_str_mv AT tubagusmohammadakhriza novelpushfrontfibonacciwindowsmodelforfindingemergingpatternswithbettercompletenessandaccuracy
AT yinghuama novelpushfrontfibonacciwindowsmodelforfindingemergingpatternswithbettercompletenessandaccuracy
AT jianhuali novelpushfrontfibonacciwindowsmodelforfindingemergingpatternswithbettercompletenessandaccuracy
_version_ 1724677449988440064