Authors
Huda Al-Shehri, Amani Al-Qarni, Leena Al-Saati, Arwa Batoaq, Haifa Badukhen, Saleh Alrashed, Jamal Alhiyafi, Sunday O Olatunji
Publication date
2017/4/30
Conference
2017 IEEE 30th canadian conference on electrical and computer engineering (CCECE)
Pages
1-4
Publisher
IEEE
Description
This work presented two prediction models for the estimation of student's performance in final examination. The work made use of the popular dataset provided by the University of Minho in Portugal, which relate to the performance in math subject and it consists of 395 data samples. Forecasting the performance of students can be useful in taking early precautions, instant actions, or selecting a student that is fit for a certain task. The need to explore better models to achieve better performance cannot be overemphasized. Most of earlier work on the same dataset used K-Nearest Neighbor algorithm and achieved low results, while Support Vector Machine algorithm was rarely used, which happens to be a very popular and powerful prediction technique. To ensure better comparison, we applied both Support Vector Machine algorithm and K-Nearest Neighbor algorithm on the dataset to predict the student's grade and …
Total citations
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Scholar articles
H Al-Shehri, A Al-Qarni, L Al-Saati, A Batoaq… - 2017 IEEE 30th canadian conference on electrical and …, 2017