LGMar 17, 2012

Data Mining: A Prediction for Performance Improvement of Engineering Students using Classification

arXiv:1203.3832v1266 citations
Originality Synthesis-oriented
AI Analysis

This addresses performance prediction for engineering students, but it is incremental as it applies existing methods to a specific educational dataset.

The paper tackled predicting engineering students' performance using classification algorithms like C4.5, ID3, and CART on educational data, resulting in improved outcomes for weaker students as shown by comparative analysis after final exams.

Now-a-days the amount of data stored in educational database increasing rapidly. These databases contain hidden information for improvement of students' performance. Educational data mining is used to study the data available in the educational field and bring out the hidden knowledge from it. Classification methods like decision trees, Bayesian network etc can be applied on the educational data for predicting the student's performance in examination. This prediction will help to identify the weak students and help them to score better marks. The C4.5, ID3 and CART decision tree algorithms are applied on engineering student's data to predict their performance in the final exam. The outcome of the decision tree predicted the number of students who are likely to pass, fail or promoted to next year. The results provide steps to improve the performance of the students who were predicted to fail or promoted. After the declaration of the results in the final examination the marks obtained by the students are fed into the system and the results were analyzed for the next session. The comparative analysis of the results states that the prediction has helped the weaker students to improve and brought out betterment in the result.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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