CYAIAug 9, 2017

Role of Secondary Attributes to Boost the Prediction Accuracy of Students Employability Via Data Mining

arXiv:1708.02940v117 citations
Originality Synthesis-oriented
AI Analysis

This incremental study addresses the need for better student employability predictions for educators and students, though it focuses on a specific domain.

The paper tackled the problem of predicting student employability by comparing classification algorithms on datasets with and without secondary psychometric attributes, finding that primary academic attributes alone yield low accuracy in early education years.

Data Mining is best-known for its analytical and prediction capabilities. It is used in several areas such as fraud detection, predicting client behavior, money market behavior, bankruptcy prediction. It can also help in establishing an educational ecosystem, which discovers useful knowledge, and assist educators to take proactive decisions to boost student performance and employability. This paper presents an empirical study that compares varied classification algorithms on two datasets of MCA (Masters in Computer Applications) students collected from various affiliated colleges of a reputed state university in India. One dataset includes only primary attributes, whereas other dataset is feeded with secondary psychometric attributes in it. The results showcase that solely primary academic attributes do not lead to smart prediction accuracy of students employability, once they square measure within the initial year of their education. The study analyzes and stresses the role of secondary psychometric attributes for better prediction accuracy and analysis of students performance. Timely prediction and analysis of students performance can help Management, Teachers and Students to work on their gray areas for better results and employment opportunities.

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