A Tree Projection Algorithm for Generation of Frequent Item Sets
نویسندگان
چکیده
منابع مشابه
A Tree Projection Algorithm for Generation of Frequent Item Sets
In this paper we propose algorithms for generation of frequent itemsets by successive construction of the nodes of a lexicographic tree of itemsets. We discuss di erent strategies in generation and traversal of the lexicographic tree such as breadthrst search, depthrst search or a combination of the two. These techniques provide di erent trade-o s in terms of the I/O, memory and computational t...
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Associative-classification is a promising classification method based on association-rule mining. Significant amount of work has already been dedicated to the process of building a classifier based on association rules. However, relatively small amount of research has been performed in association-rule mining from multi-label data. In such data each example can belong, and thus should be classi...
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Problem Statement: In today’s life, the mining of frequent patterns is a basic problem in data mining applications. The algorithms which are used to generate these frequent patterns must perform efficiently. The objective was to propose an effective algorithm which generates frequent patterns in less time. Approach: We proposed an algorithm which was based on hashing technique and combines a ve...
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In this paper, we propose three algorithms LCMfreq, LCM, and LCMmax for mining all frequent sets, frequent closed item sets, and maximal frequent sets, respectively, from transaction databases. The main theoretical contribution is that we construct treeshaped transversal routes composed of only frequent closed item sets, which is induced by a parent-child relationship defined on frequent closed...
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Frequent pattern mining is the process of mining data in a set of items or some patterns from a large database. The resulted frequent set data supports the minimum support threshold. A frequent pattern is a pattern that occurs frequently in a dataset. Association rule mining is defined as to find out association rules that satisfy the predefined minimum support and confidence from a given data ...
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ژورنال
عنوان ژورنال: Journal of Parallel and Distributed Computing
سال: 2001
ISSN: 0743-7315
DOI: 10.1006/jpdc.2000.1693