Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information

碩士 === 國立中央大學 === 資訊工程研究所 === 90 === Incremental mining of association rules from dynamic databases refers to the maintenance and utilization of the knowledge discovered in the previous mining operations.Sliding- window-filtering (SWF)is a technique proposed to filtering false candidate 2-itemsets by...

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Main Authors: Shi-Hsan Yang, 楊士賢
Other Authors: Chia-Hui Chang
Format: Others
Language:zh-TW
Published: 2002
Online Access:http://ndltd.ncl.edu.tw/handle/69482842699773973055
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spelling ndltd-TW-090NCU053920192015-10-13T12:46:50Z http://ndltd.ncl.edu.tw/handle/69482842699773973055 Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information 遞增資料關聯式規則探勘之改進 Shi-Hsan Yang 楊士賢 碩士 國立中央大學 資訊工程研究所 90 Incremental mining of association rules from dynamic databases refers to the maintenance and utilization of the knowledge discovered in the previous mining operations.Sliding- window-filtering (SWF)is a technique proposed to filtering false candidate 2-itemsets by segmenting a transaction database into several partitions.SWF computes a set of candidate 2-itemsets that is close to frequent 2-itemsets.Therefore,it is possible to generate several candidate k -itemsets for one database scan.Such a database scan reduction technique greatly increase the performance for frequent itemsets discovery.In this paper,we extend SWF by incorporating previously discovered information and propose two algorithms to boost the performance for incremental mining.The first algorithm FI SWF (SWF with Frequent Itemset)reuse the frequent itemsets (and the counts)of previous mining task as FUP2 to reduce the number of new candidate itemsets that have to be checked.The second algorithm CI SWF (SWF with Candidate Itemset)reuse the candidate itemsets (and the counts)from the previously mining task.Experimental studies are performed to evaluate performance of the new algorithms.The study shows that the new incremental algorithm is signi ficantly faster than SWF.More importantly,the need for more disk space to store the previously discovered knowledge does not increase the maximum memory required during the execution time. Chia-Hui Chang 張嘉惠 2002 學位論文 ; thesis 69 zh-TW
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description 碩士 === 國立中央大學 === 資訊工程研究所 === 90 === Incremental mining of association rules from dynamic databases refers to the maintenance and utilization of the knowledge discovered in the previous mining operations.Sliding- window-filtering (SWF)is a technique proposed to filtering false candidate 2-itemsets by segmenting a transaction database into several partitions.SWF computes a set of candidate 2-itemsets that is close to frequent 2-itemsets.Therefore,it is possible to generate several candidate k -itemsets for one database scan.Such a database scan reduction technique greatly increase the performance for frequent itemsets discovery.In this paper,we extend SWF by incorporating previously discovered information and propose two algorithms to boost the performance for incremental mining.The first algorithm FI SWF (SWF with Frequent Itemset)reuse the frequent itemsets (and the counts)of previous mining task as FUP2 to reduce the number of new candidate itemsets that have to be checked.The second algorithm CI SWF (SWF with Candidate Itemset)reuse the candidate itemsets (and the counts)from the previously mining task.Experimental studies are performed to evaluate performance of the new algorithms.The study shows that the new incremental algorithm is signi ficantly faster than SWF.More importantly,the need for more disk space to store the previously discovered knowledge does not increase the maximum memory required during the execution time.
author2 Chia-Hui Chang
author_facet Chia-Hui Chang
Shi-Hsan Yang
楊士賢
author Shi-Hsan Yang
楊士賢
spellingShingle Shi-Hsan Yang
楊士賢
Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
author_sort Shi-Hsan Yang
title Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
title_short Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
title_full Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
title_fullStr Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
title_full_unstemmed Extending SWF for Incremental Association Mining by Incorporating Previously Discovered Information
title_sort extending swf for incremental association mining by incorporating previously discovered information
publishDate 2002
url http://ndltd.ncl.edu.tw/handle/69482842699773973055
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