Corpus ID: 212498580

Mining Educational Data to Predict Student‘s Academic Performance

@inproceedings{Shah2016MiningED,
  title={Mining Educational Data to Predict Student‘s Academic Performance},
  author={Jyoti Bansode Shah and Kumar S. Anupama and Pal Saurabhsuggested},
  year={2016}
}
Data Mining Technique can be used in different fields to extract knowledge from large data. Data Mining is very useful in educational field to find important pattern from the data. The educational institutes are always insists on giving quality education. By using prediction method a model can be developed which can be used to predict students‘ performance. Prediction can be done by using students‘ academic background and family background. Different Data Mining Techniques like Classification… Expand

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