An Efficient Algorithm for Proportionally Fault-tolerant Data Mining

碩士 === 國立東華大學 === 資訊工程學系 === 92 === Abstract Frequent pattern mining problem has been studying for several years, while few works discuss on fault-tolerant pattern mining. Fault-tolerant data mining extracts more interesting information from real world data which may be polluted by noise. Howe...

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Main Authors: Yu-tzu Lin, 林鈺慈
Other Authors: Guanling Lee
Format: Others
Language:en_US
Published: 2004
Online Access:http://ndltd.ncl.edu.tw/handle/95270366119051968719
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spelling ndltd-TW-092NDHU53920042016-06-17T04:16:18Z http://ndltd.ncl.edu.tw/handle/95270366119051968719 An Efficient Algorithm for Proportionally Fault-tolerant Data Mining 高效率比例性容錯資料探勘演算法 Yu-tzu Lin 林鈺慈 碩士 國立東華大學 資訊工程學系 92 Abstract Frequent pattern mining problem has been studying for several years, while few works discuss on fault-tolerant pattern mining. Fault-tolerant data mining extracts more interesting information from real world data which may be polluted by noise. However, those few previous works either not define the problem maturely or restrict the problem to finding those patterns tolerate fixed number of fault items. In this paper, the problem of mining proportionally fault-tolerant frequent patterns is discussed. Moreover, two algorithms are proposed to solve it. The first algorithm, named FT-BottomUp, applies FT-Apriori heuristic and performs the idea of finding all FT-patterns with all possible number of faults. The second algorithm, FT-LevelWise, divides all FT-patterns into several groups by their number of tolerable faults, and mines the content patterns of each group respectively. The experiment result shows more potential fault-tolerant patterns are extracted by our approach. Our contribution is offering a different type of fault-tolerant frequent pattern, in those patterns, the number of tolerated faults is proportional to the length of patterns. This gives the user another choice when traditional fault-tolerant frequent pattern mining result can’t satisfy them. Guanling Lee 李官陵 2004 學位論文 ; thesis 30 en_US
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description 碩士 === 國立東華大學 === 資訊工程學系 === 92 === Abstract Frequent pattern mining problem has been studying for several years, while few works discuss on fault-tolerant pattern mining. Fault-tolerant data mining extracts more interesting information from real world data which may be polluted by noise. However, those few previous works either not define the problem maturely or restrict the problem to finding those patterns tolerate fixed number of fault items. In this paper, the problem of mining proportionally fault-tolerant frequent patterns is discussed. Moreover, two algorithms are proposed to solve it. The first algorithm, named FT-BottomUp, applies FT-Apriori heuristic and performs the idea of finding all FT-patterns with all possible number of faults. The second algorithm, FT-LevelWise, divides all FT-patterns into several groups by their number of tolerable faults, and mines the content patterns of each group respectively. The experiment result shows more potential fault-tolerant patterns are extracted by our approach. Our contribution is offering a different type of fault-tolerant frequent pattern, in those patterns, the number of tolerated faults is proportional to the length of patterns. This gives the user another choice when traditional fault-tolerant frequent pattern mining result can’t satisfy them.
author2 Guanling Lee
author_facet Guanling Lee
Yu-tzu Lin
林鈺慈
author Yu-tzu Lin
林鈺慈
spellingShingle Yu-tzu Lin
林鈺慈
An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
author_sort Yu-tzu Lin
title An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
title_short An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
title_full An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
title_fullStr An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
title_full_unstemmed An Efficient Algorithm for Proportionally Fault-tolerant Data Mining
title_sort efficient algorithm for proportionally fault-tolerant data mining
publishDate 2004
url http://ndltd.ncl.edu.tw/handle/95270366119051968719
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