IJRCS – Volume 3 Issue 3 Paper 3

DATA MINING FOR BUILDING AN INFORMED DECISION MAKING MODEL FOR CAREER PREDICTION

Author’s Name :  S. Sathyavathi | N.Niraimathi |K.Priyadarshini

Volume 03 Issue 02  Year 2016  ISSN No:  2349-3828  Page no: 8-12

12

Abstract:

The impact of the credits on the career choice is determined by using mining tools classification (ID3, CHAID). The steps performed for mining the data is classification. The tool used is Rapid miner. The algorithm used for comparing the datasets using classification are ID3, CHAID, Decision tree are used for classification. The performance of the algorithm are compared and it was found that Decision tree provide the maximum accuracy for classifying the fittings prediction based on the skills.

Keywords:

Data mining, classification, Tree induction algorithms, ID3, CHAID, Decision tree.

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