Mining Educational Data for Students' Placement Prediction using Sum of Difference Method

作者: Ramanathan. L , Swarnalatha P , D. Ganesh Gopal

DOI: 10.5120/17474-8330

关键词:

摘要: he purpose of higher education organizations have to offer superior its students. The proficiency forecast student's achievement is valuable in affiliated ways associated with organization system. Students' scores which they got an exam can be used invent training set dominate learning algorithms. With the academia attributes students such as internal marks, lab age etc., it easily predict their performance. After getting predicted result performance student engage desirable assistance will improved. Educational Data Mining (EDM) offers information educational from data. EDM provides various methods for prediction performance, improve future In this paper, by using academic records, age, and has been predicting about placement final year Based on result, KeywordsMining, Mining, Sum Difference, Prediction.

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