Unified Prediction Model for Employability in Indian Higher Education System
- URL: http://arxiv.org/abs/2407.17591v1
- Date: Wed, 5 Jun 2024 06:23:15 GMT
- Title: Unified Prediction Model for Employability in Indian Higher Education System
- Authors: Pooja Thakar, Anil Mehta, Manisha,
- Abstract summary: This paper explores and proves statistically that there is no significant difference in Indian Education System with respect to states as far as prediction of employability of students is concerned.
Model provides a generalized solution for student employability prediction in Indian scenario.
- Score: 1.4610685586329806
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Educational Data Mining has become extremely popular among researchers in last decade. Prior effort in this area was only directed towards prediction of academic performance of a student. Very less number of researches are directed towards predicting employability of a student i.e. prediction of students performance in campus placements at an early stage of enrollment. Furthermore, existing researches on students employability prediction are not universal in approach and is either based upon only one type of course or University/Institute. Henceforth, is not scalable from one context to another. With the necessity of unification, data of professional technical courses namely Bachelor in Engineering/Technology and Masters in Computer Applications students have been collected from 17 states of India. To deal with such a data, a unified predictive model has been developed and applied on 17 states datasets. The research done in this paper proves that model has universal application and can be applied to various states and institutes pan India with different cultural background and course structure. This paper also explores and proves statistically that there is no significant difference in Indian Education System with respect to states as far as prediction of employability of students is concerned. Model provides a generalized solution for student employability prediction in Indian Scenario.
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