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A Machine Learning based Approach for Mapping Personality Traits and Perceived Stress Scale of Undergraduate Students

This paper focuses on the personality traits of students and stress scale they had to face in undergraduate level. With the advancement of computer science and machine learning based applications, we have tried to inter-correlate the terms. In the area of computational psychology, it is important to...

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Published in:International journal of modern education and computer science 2019-08, Vol.11 (8), p.42-47
Main Authors: A. Marouf, Ahmed, F. Ashrafi, Adnan, Ahmed, Tanveer, Emon, Tarikuzzaman
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creator A. Marouf, Ahmed
F. Ashrafi, Adnan
Ahmed, Tanveer
Emon, Tarikuzzaman
description This paper focuses on the personality traits of students and stress scale they had to face in undergraduate level. With the advancement of computer science and machine learning based applications, we have tried to inter-correlate the terms. In the area of computational psychology, it is important to understand participants’ psychological behavior using personality traits and predict how he/she is going to react on a certain level of the stressed situation. For the experiment, we have collected data of around 150 participants. The personality traits data are collected using the standard survey named The Big Five Personality Test created by IPIP organization and stress scale measurements are collected using scale devised by Sheldon Cohen named as Perceived Stress Scale hosted by Mind garden. The data are taken from Bangladeshi computer science undergraduate students and kept anonymous. In this paper, we have applied nine different machine learning based classification models are built for mapping the traits with stress scales. For performance evaluation, we have utilized precision, recall, f1-score, and accuracy. From the experimental findings, we found that Sequential Minimal Optimization (SMO) and k-NN classifier gives the highest prediction accuracy which is approximately 70%.
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subjects Accuracy
Artificial intelligence
College students
Computer science
Machine learning
Mapping
Optimization
Performance evaluation
Personality
Personality Measures
Personality tests
Personality traits
Privacy
Psychology
Resistance (Psychology)
Students
Undergraduate Students
title A Machine Learning based Approach for Mapping Personality Traits and Perceived Stress Scale of Undergraduate Students
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