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Association Rule Generation Using Apriori Mend Algorithm for Student's Placement


Affiliations
1 Department of Computer Science and Engineering, Dr. G.U. Pope College of Engineering, Sawyerpuram-628251, Tamilnadu, India
2 Department of Computer Science and Engineering, Chandy College of Engineering, Thoothukudi, Tamilnadu, India
     

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Association rules reflect the inner relationship of data. Discovering these associations is beneficial to the correct and appropriate decision made by decision-makers. It also provides an effective means to found the potential link between the data, reflecting a built-in association between the data. In order to show the effective relation of data, student placement was chosen and experiments were carried out which shows the best rules with 92.86% confidence while comparing with the previous Apriori approach. In this paper Apriori Mend algorithm was discussed which provide better result in mining association rules for Student's placement in industry.

Keywords

Apriori Mend Algorithm, Association Rules, Data Mining, Knowledge Discovery.
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  • Association Rule Generation Using Apriori Mend Algorithm for Student's Placement

Abstract Views: 183  |  PDF Views: 3

Authors

D. Magdalene Delighta Angeline
Department of Computer Science and Engineering, Dr. G.U. Pope College of Engineering, Sawyerpuram-628251, Tamilnadu, India
I. Samuel Peter James
Department of Computer Science and Engineering, Chandy College of Engineering, Thoothukudi, Tamilnadu, India

Abstract


Association rules reflect the inner relationship of data. Discovering these associations is beneficial to the correct and appropriate decision made by decision-makers. It also provides an effective means to found the potential link between the data, reflecting a built-in association between the data. In order to show the effective relation of data, student placement was chosen and experiments were carried out which shows the best rules with 92.86% confidence while comparing with the previous Apriori approach. In this paper Apriori Mend algorithm was discussed which provide better result in mining association rules for Student's placement in industry.

Keywords


Apriori Mend Algorithm, Association Rules, Data Mining, Knowledge Discovery.