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Novel applications of association rule mining- data stream mining this thesis is submitted as part of degree of Master of Computer and Information Sciences at the Auckland University of Technology, August 2009 /Vithal Kadam, Omkar. January 2009 (has links)
Thesis (MCIS)--AUT University, 2009. / Includes bibliographical references. Also held in print (72 leaves : ill. ; 30 cm.) in the Archive at the City Campus (T 006.312 VIT)
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Mining association rules with weighted itemsCai, Chun Hing. January 1998 (has links) (PDF)
Thesis (M. Phil.)--Chinese University of Hong Kong, 1998. / Description based on contents viewed Mar. 13, 2007; title from title screen. Includes bibliographical references (p. 99-103). Also available in print.
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New data mining models based on formal concept analysis and probability logicJiang, Liying. January 1900 (has links)
Thesis (Ph.D.)--University of Nebraska-Lincoln, 2006. / Title from title screen (site viewed on Jan 23, 2007). PDF text: 127 p. : ill. (some col.) ; 1.29Mb. UMI publication number: AAT 3216105. Includes bibliographical references. Also available in microfilm and microfiche format.
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Apriori sets and sequences mining association rules from time sequence attributes.Pray, Keith A. January 2004 (has links)
Thesis (M.S.) -- Worcester Polytechnic Institute. / Keywords: mining complex data; temporal association rules; computer system performance; stock market analysis; sleep disorder data. Includes bibliographical references (p. 79-85).
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Association rule mining in cooperative researchZhang, Ya. Klein, Cerry M. January 2009 (has links)
The entire thesis text is included in the research.pdf file; the official abstract appears in the short.pdf file; a non-technical public abstract appears in the public.pdf file. Title from PDF of title page (University of Missouri--Columbia, viewed January 26, 2010). Thesis advisor: Dr. Cerry M. Klein. Includes bibliographical references.
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Two new approaches to evaluate association rulesDelpisheh, Elnaz, University of Lethbridge. Faculty of Arts and Science January 2010 (has links)
Data mining aims to discover interesting and unknown patterns in large-volume data. Association rule mining is one of the major data mining tasks, which attempts to find inherent relationships among data items in an application domain, such as supermarket basket analysis. An essential post-process in an association rule mining task is the evaluation of association rules by measures for their interestingness. Different interestingness measures have been proposed and studied. Given an association rule mining task, measures are assessed against a set of user-specified properties. However, in practice, given the subjectivity and inconsistencies in property specifications, it is a non-trivial task to make appropriate measure selections. In this work, we propose two novel approaches to assess interestingness measures. Our first approach utilizes the analytic hierarchy process to capture quantitatively domain-dependent requirements on properties, which are later used in assessing measures. This approach not only eliminates any inconsistencies in an end user’s property specifications through consistency checking but also is invariant to the number of association rules. Our
second approach dynamically evaluates association rules according to a composite and
collective effect of multiple measures. It interactively snapshots the end user’s domain-
dependent requirements in evaluating association rules. In essence, our approach uses
neural networks along with back-propagation learning to capture the relative importance
of measures in evaluating association rules. Case studies and simulations have been conducted to show the effectiveness of our two approaches. / viii, 85 leaves : ill. ; 29 cm
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Novel applications of Association Rule Mining- Data Stream MiningVithal Kadam, Omkar January 2009 (has links)
From the advent of association rule mining, it has become one of the most researched areas of data exploration schemes. In recent years, implementing association rule mining methods in extracting rules from a continuous flow of voluminous data, known as Data Stream has generated immense interest due to its emerging applications such as network-traffic analysis, sensor-network data analysis. For such typical kinds of application domains, the facility to process such enormous amount of stream data in a single pass is critical.
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Novel applications of Association Rule Mining- Data Stream MiningVithal Kadam, Omkar January 2009 (has links)
From the advent of association rule mining, it has become one of the most researched areas of data exploration schemes. In recent years, implementing association rule mining methods in extracting rules from a continuous flow of voluminous data, known as Data Stream has generated immense interest due to its emerging applications such as network-traffic analysis, sensor-network data analysis. For such typical kinds of application domains, the facility to process such enormous amount of stream data in a single pass is critical.
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Hybrid recommender system using association rules a thesis submitted to Auckland University of Technology in partial fulfilment of the requirements for the degree of Master of Computer and Information Sciences (MCIS), 2009 /Cristache, Alex. January 2009 (has links)
Thesis (MCIS)--AUT University, 2009. / Includes bibliographical references. Also held in print ( leaves : ill. ; 30 cm.) in the Archive at the City Campus (T 006.312 CRI)
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Association rule based classificationPalanisamy, Senthil Kumar. January 2006 (has links)
Thesis (M.S.)--Worcester Polytechnic Institute. / Keywords: Itemset Pruning, Association Rules, Adaptive Minimal Support, Associative Classification, Classification. Includes bibliographical references (p.70-74).
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