Predicting the “graduate on time (GOT)” of PhD students using binary logistics regression model

Malaysian government has recently set a new goal to produce 60,000 Malaysian PhD holders by the year 2023. As a Malaysia’s largest institution of higher learning in terms of size and population which offers more than 500 academic programmes in a conducive and vibrant environment, UiTM has taken seve...

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Hauptverfasser: Shariff, S. Sarifah Radiah, Rodzi, Nur Atiqah Mohd, Rahman, Kahartini Abdul, Zahari, Siti Meriam, Deni, Sayang Mohd
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Rodzi, Nur Atiqah Mohd
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description Malaysian government has recently set a new goal to produce 60,000 Malaysian PhD holders by the year 2023. As a Malaysia’s largest institution of higher learning in terms of size and population which offers more than 500 academic programmes in a conducive and vibrant environment, UiTM has taken several initiatives to fill up the gap. Strategies to increase the numbers of graduates with PhD are a process that is challenging. In many occasions, many have already identified that the struggle to get into the target set is even more daunting, and that implementation is far too ideal. This has further being progressing slowly as the attrition rate increases. This study aims to apply the proposed models that incorporates several factors in predicting the number PhD students that will complete their PhD studies on time. Binary Logistic Regression model is proposed and used on the set of data to determine the number. The results show that only 6.8% of the 2014 PhD students are predicted to graduate on time and the results are compared wih the actual number for validation purpose.
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subjects Graduates
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Regression models
Students
title Predicting the “graduate on time (GOT)” of PhD students using binary logistics regression model
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