Usage and Research Challenges in the Area of Frequent Pattern in Data Mining
Journal Title: IOSR Journals (IOSR Journal of Computer Engineering) - Year 2013, Vol 13, Issue 2
Abstract
Frequent pattern mining is an important chore in the data mining, which reduces the complexity of the data mining task. The usages of frequent patterns in various verticals of the data mining functionalities are discussed in this paper. The gap analysis between the requirements and the existing technology is also analyzed. State of art in the area of frequent pattern mining was thrashed out here. Working mechanisms and the usage of frequent patterns in various practices were conversed in the paper. The core area to be concentrated is the minimal representation, contextual analysis and the dynamic identification of the frequent patterns.
Authors and Affiliations
P Alagesh Kannan
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