Author : D. Kalpanadevi 1
Date of Publication :7th April 2018
Abstract: In this research, focuses on using fuzzy partition method and triangular membership function of quantitative value for each transaction item, for the generation of more realistic association using fuzzy intervals among quantitative attribute. Secondly, to implement Frequent Pattern Tree growth for deal with the process of data mining to analyze the frequent pattern item. The performance of cognitive skill of knowledge can be analyzed by the categories of logical Reasoning, Numerical Ability, and Perceptual Speed of ability and relates with parents’ education, Standard of Medium study gender and specialty.
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