Evaluating Machine Learning Capabilities for Predicting Joining Behavior of Freshmen Students Enrolled at Institutes of Higher Education: Case Study from a Novel Problem Domain

Author(s):  
Pawan Kumar ◽  
Manmohan Sharma
Entropy ◽  
2021 ◽  
Vol 23 (4) ◽  
pp. 485 ◽  
Author(s):  
Carlos A. Palacios ◽  
José A. Reyes-Suárez ◽  
Lorena A. Bearzotti ◽  
Víctor Leiva ◽  
Carolina Marchant

Data mining is employed to extract useful information and to detect patterns from often large data sets, closely related to knowledge discovery in databases and data science. In this investigation, we formulate models based on machine learning algorithms to extract relevant information predicting student retention at various levels, using higher education data and specifying the relevant variables involved in the modeling. Then, we utilize this information to help the process of knowledge discovery. We predict student retention at each of three levels during their first, second, and third years of study, obtaining models with an accuracy that exceeds 80% in all scenarios. These models allow us to adequately predict the level when dropout occurs. Among the machine learning algorithms used in this work are: decision trees, k-nearest neighbors, logistic regression, naive Bayes, random forest, and support vector machines, of which the random forest technique performs the best. We detect that secondary educational score and the community poverty index are important predictive variables, which have not been previously reported in educational studies of this type. The dropout assessment at various levels reported here is valid for higher education institutions around the world with similar conditions to the Chilean case, where dropout rates affect the efficiency of such institutions. Having the ability to predict dropout based on student’s data enables these institutions to take preventative measures, avoiding the dropouts. In the case study, balancing the majority and minority classes improves the performance of the algorithms.


ALQALAM ◽  
2017 ◽  
Vol 34 (1) ◽  
pp. 30
Author(s):  
Nur Hidayah

There has been a concern over a high unemployment rate among graduates of Islamic higher education and a low proportion of entrepreneurs in Indonesia. In fact, a high proportion of entrepreneurs is one of indicators of a country’s welfare. This has generated a question: to what extent do Islamic values cultivate entrepreneurial culture among its adherents? How to cultivate entrepreneurial culture in Islamic higher education? This paper will investigate this matter using a case study of Faculty of Islamic Law and Economics at Banten State Institute for Islamic Studies.  The paper argues that the curriculum at the faculty of Islamic Law and Economics has not been oriented towards building entrepreneurial culture. The curriculum consists of subjects to enhance the students’ competence and skills to prepare them as bachelors of syari`ah economics for the professions such as manager, lecturer, researcher, syari`ah auditor, etc, instead of preparing them for entrepreneurs who are capable to build his or her own business from the scratch.    To propose Islamic entrepreneurship study program at the FSEI of IAIN SMHB, it is important to have a strong political will not only from the internal IAIN but also higher authoritative body such as the Ministry of Religious Affairs to facilitate this from not only the accreditation process but also financial support. A further feasibility study needs to be undertaken to build its infrastructure such as qualified lecturers, appropriate curriculum structure, and recruitment student system. Since this field has a strong link with a ‘real sector’, there has been an urgent need to build cooperations with business sector to enable the students to undertake their apprentice and build their networks to facilitate their ability to develop their own business.     Keywords: Islam, entrepreneurship, entrepreneurial education.


2020 ◽  
Vol 1 (2) ◽  
pp. 18-33
Author(s):  
Zarina Che Imbi ◽  
Tse-Kian Neo ◽  
Mai Neo

In the era of digital learning, multimedia-based classroom has been commonly used in higher education including Malaysian higher education institutions. A case study has been performed to evaluate web-based learning using Level 1 to 3 of Kirkpatrick's model in a multi-disciplinary course at Multimedia University, Malaysia. In this study, mixed method research was employed in which triangulation was performed from multiple sources of data collection to give deeper understanding. Students perceived that learning with multimedia was enjoyable. They were also motivated in learning and engaged through the use of web module as multimedia was perceived to motivate them and make learning fun. Students showed significant improvements in their knowledge based on the pre-test and post-test results on learning evaluation. Students were perceived to transfer the learning from web-based learning into the learning outcome. The systematic evaluation can provide the feedback that educators and institution as a whole need to improve the learning environment and programme quality. This study contributes to the research field by adding another perspective in evaluations of web-based learning. It also provides empirical evidence on student perspectives, learning and behaviour in a private university. It demonstrated that the Kirkpatrick's model is useful as an evaluation tool to be used in higher education.


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