Tuning GSP parameters with GA

碩士 === 國立中央大學 === 企業管理學系 === 102 === Tuning GSP parameters with GA ABSTRACT In data mining, association rules can be shown when customers buy products, which products will be purchased at the same time. Scholars use this feature to develop market basket analysis to formulate mar...

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Main Authors: Wei-ci Jheng, 鄭洧奇
Other Authors: Ping-Yu Hsu
Format: Others
Language:zh-TW
Published: 2014
Online Access:http://ndltd.ncl.edu.tw/handle/462t5e
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spelling ndltd-TW-102NCU051210572019-05-15T21:32:35Z http://ndltd.ncl.edu.tw/handle/462t5e Tuning GSP parameters with GA 以基因演算法探討 GSP 參數之研究 Wei-ci Jheng 鄭洧奇 碩士 國立中央大學 企業管理學系 102 Tuning GSP parameters with GA ABSTRACT In data mining, association rules can be shown when customers buy products, which products will be purchased at the same time. Scholars use this feature to develop market basket analysis to formulate marketing strategies for business. As we know, the data are changing all the time. When new data generate, the old data will be replaced. In the database, time become a very important attribute. And new data mining method have been proposed, called generalized sequential patterns (GSP). GSP uses time stamp to find the product portfolio with sequential patterns. However, the GSP parameter is user-defined. The result of the operation may be unstable, because of the parameter setting incorrectly. Tuning the parameters used in this study combined GSP and genetic algorithm (GA) to improve the result continuously, to find the appropriate parameters. In the experiment, we use a medium-sized supermarket verify the results and found that after comparing with random input parameters, the parameters of the proposed method found significantly better than a random set of parameters. Keywords:Sequential pattern mining、GSP、GA Ping-Yu Hsu 許秉瑜 2014 學位論文 ; thesis 62 zh-TW
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language zh-TW
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description 碩士 === 國立中央大學 === 企業管理學系 === 102 === Tuning GSP parameters with GA ABSTRACT In data mining, association rules can be shown when customers buy products, which products will be purchased at the same time. Scholars use this feature to develop market basket analysis to formulate marketing strategies for business. As we know, the data are changing all the time. When new data generate, the old data will be replaced. In the database, time become a very important attribute. And new data mining method have been proposed, called generalized sequential patterns (GSP). GSP uses time stamp to find the product portfolio with sequential patterns. However, the GSP parameter is user-defined. The result of the operation may be unstable, because of the parameter setting incorrectly. Tuning the parameters used in this study combined GSP and genetic algorithm (GA) to improve the result continuously, to find the appropriate parameters. In the experiment, we use a medium-sized supermarket verify the results and found that after comparing with random input parameters, the parameters of the proposed method found significantly better than a random set of parameters. Keywords:Sequential pattern mining、GSP、GA
author2 Ping-Yu Hsu
author_facet Ping-Yu Hsu
Wei-ci Jheng
鄭洧奇
author Wei-ci Jheng
鄭洧奇
spellingShingle Wei-ci Jheng
鄭洧奇
Tuning GSP parameters with GA
author_sort Wei-ci Jheng
title Tuning GSP parameters with GA
title_short Tuning GSP parameters with GA
title_full Tuning GSP parameters with GA
title_fullStr Tuning GSP parameters with GA
title_full_unstemmed Tuning GSP parameters with GA
title_sort tuning gsp parameters with ga
publishDate 2014
url http://ndltd.ncl.edu.tw/handle/462t5e
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