Computational Statistics and Machine Learning Techniques for Effective Decision Making on Student's Employment for Real-Time

Deepak Kumar, Chaman Verma, Pradeep Kumar Singh, Maria Simona Raboaca, Raluca-Andreea Felseghi, Kayhan Zrar Ghafoor
2021 Mathematics  
The present study accentuated a hybrid approach to evaluate the impact, association and discrepancies of demographic characteristics on a student's job placement. The present study extracted several significant academic features that determine the Master of Business Administration (MBA) student placement and confirm the placed gender. This paper recommended a novel futuristic roadmap for students, parents, guardians, institutions, and companies to benefit at a certain level. Out of seven
more » ... ents, the first five experiments were conducted with deep statistical computations, and the last two experiments were performed with supervised machine learning approaches. On the one hand, the Support Vector Machine (SVM) outperformed others with the uppermost accuracy of 90% to predict the employment status. On the other hand, the Random Forest (RF) attained a maximum accuracy of 88% to recognize the gender of placed students. Further, several significant features are also recommended to identify the placement of gender and placement status. A statistical t-test at 0.05 significance level proved that the student's gender did not influence their offered salary during job placement and MBA specializations Marketing and Finance (Mkt&Fin) and Marketing and Human Resource (Mkt&HR) (p > 0.05). Additionally, the result of the t-test also showed that gender did not affect student's placement test percentage scores (p > 0.05) and degree streams such as Science and Technology (Sci&Tech), Commerce and Management (Comm&Mgmt). Others did not affect the offered salary (p > 0.05). Further, the χ2 test revealed a significant association between a student's course specialization and student's placement status (p < 0.05). It also proved that there is no significant association between a student's degree and placement status (p > 0.05). The current study recommended automatic placement prediction with demographic impact identification for the higher educational universities and institutions that will help human communities (students, teachers, parents, institutions) to prepare for the future accordingly.
doi:10.3390/math9111166 fatcat:pvl2xts4ufcthl6353wtt2iilq