An Effective Algorithm for Mining Association Rules with Multiple Thresholds

碩士 === 國立交通大學 === 資訊工程系 === 89 === Catering the buying behaviors of customers becomes more and more important by the popularization of E-Commerce recently. How to find the association rules efficiently from the transaction records is one of the most interesting topics to be investigated....

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Main Authors: Alfred Lin, 林逸修
Other Authors: Cheng Chen
Format: Others
Language:en_US
Published: 2001
Online Access:http://ndltd.ncl.edu.tw/handle/48206139712450933932
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spelling ndltd-TW-089NCTU03920232016-01-29T04:28:13Z http://ndltd.ncl.edu.tw/handle/48206139712450933932 An Effective Algorithm for Mining Association Rules with Multiple Thresholds 一個有效的使用多重門檻值挖掘關聯性規則演算法 Alfred Lin 林逸修 碩士 國立交通大學 資訊工程系 89 Catering the buying behaviors of customers becomes more and more important by the popularization of E-Commerce recently. How to find the association rules efficiently from the transaction records is one of the most interesting topics to be investigated. In this thesis, at, first, we propose en efficient algorithm, named Early Pruning Partition algorithm (EPP), with extending the concept of Partition algorithm and using an early pruning technology to improve the performance of mining frequent itemsets under single minimum support. Then we add the checking of multiple thresholds in EPP algorithm to construct our Multiple Thresholds Early Pruning Partition algorithm (MTEPP). Our MTEPP algorithm can find more effective frequent itemsets corresponding to some events of buying behavior. For evaluating our algorithm, we also implement a simulation environment to verify it. According to our evaluations, our algorithms perform a well performance and find the more useful frequent itemsets indeed. The detailed descriptions of our algorithms will be given in the contents. Cheng Chen 陳正 2001 學位論文 ; thesis 76 en_US
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description 碩士 === 國立交通大學 === 資訊工程系 === 89 === Catering the buying behaviors of customers becomes more and more important by the popularization of E-Commerce recently. How to find the association rules efficiently from the transaction records is one of the most interesting topics to be investigated. In this thesis, at, first, we propose en efficient algorithm, named Early Pruning Partition algorithm (EPP), with extending the concept of Partition algorithm and using an early pruning technology to improve the performance of mining frequent itemsets under single minimum support. Then we add the checking of multiple thresholds in EPP algorithm to construct our Multiple Thresholds Early Pruning Partition algorithm (MTEPP). Our MTEPP algorithm can find more effective frequent itemsets corresponding to some events of buying behavior. For evaluating our algorithm, we also implement a simulation environment to verify it. According to our evaluations, our algorithms perform a well performance and find the more useful frequent itemsets indeed. The detailed descriptions of our algorithms will be given in the contents.
author2 Cheng Chen
author_facet Cheng Chen
Alfred Lin
林逸修
author Alfred Lin
林逸修
spellingShingle Alfred Lin
林逸修
An Effective Algorithm for Mining Association Rules with Multiple Thresholds
author_sort Alfred Lin
title An Effective Algorithm for Mining Association Rules with Multiple Thresholds
title_short An Effective Algorithm for Mining Association Rules with Multiple Thresholds
title_full An Effective Algorithm for Mining Association Rules with Multiple Thresholds
title_fullStr An Effective Algorithm for Mining Association Rules with Multiple Thresholds
title_full_unstemmed An Effective Algorithm for Mining Association Rules with Multiple Thresholds
title_sort effective algorithm for mining association rules with multiple thresholds
publishDate 2001
url http://ndltd.ncl.edu.tw/handle/48206139712450933932
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