Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi

The recruitment process is vital for organizations. In the digital era, social media platforms like LinkedIn have become famous for recruitment, and recruiters widely use them to find potential employees. Recruiting unqualified applicants may affect the organization. The manual recruitment process e...

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Main Authors: Ahmad, Nurul Atirah, Abu Samah, Khyrina Airin Fariza, Ahmad Kushairi, Nuwairah Aimi
Format: Book Section
Language:English
Published: Faculty of Computer and Mathematical Sciences 2023
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/94125/1/94125.pdf
https://ir.uitm.edu.my/id/eprint/94125/
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Institution: Universiti Teknologi Mara
Language: English
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spelling my.uitm.ir.941252024-05-02T03:15:40Z https://ir.uitm.edu.my/id/eprint/94125/ Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi Ahmad, Nurul Atirah Abu Samah, Khyrina Airin Fariza Ahmad Kushairi, Nuwairah Aimi Integer programming The recruitment process is vital for organizations. In the digital era, social media platforms like LinkedIn have become famous for recruitment, and recruiters widely use them to find potential employees. Recruiting unqualified applicants may affect the organization. The manual recruitment process entails significant time, high costs, and potential bias. Thus, this project aims to classify and generate a list of potential job applicants by analyzing various attributes of their LinkedIn accounts, such as title, location, skills, education, language, certification, and years of experience. This project implements the Naive Bayes algorithm as the classification algorithm. The classification is set to two categories: Eligible or Ineligible. The NB model achieved a commendable accuracy of 89.8%, indicating good performance in classifying potential job applicants. The system’s functionality based on the use case and usability tested by the Human Resources expert has been tested to evaluate its system requirements. The usability testing yields a score of 80% which indicates that the system is acceptable. The classification results are visualized, allowing users to identify eligible applicants efficiently. Thus, this project can help users find suitable applicants for the job. Future research can expand the criteria to include cultural fit and behavior traits. Faculty of Computer and Mathematical Sciences 2023 Book Section NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/94125/1/94125.pdf Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi. (2023) In: International Jasin Multimedia & Computer Science Invention and Innovation Exhibition (i-JaMCSIIX 2023). Faculty of Computer and Mathematical Sciences, Kampus Jasin, p. 62. (Submitted)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Integer programming
spellingShingle Integer programming
Ahmad, Nurul Atirah
Abu Samah, Khyrina Airin Fariza
Ahmad Kushairi, Nuwairah Aimi
Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
description The recruitment process is vital for organizations. In the digital era, social media platforms like LinkedIn have become famous for recruitment, and recruiters widely use them to find potential employees. Recruiting unqualified applicants may affect the organization. The manual recruitment process entails significant time, high costs, and potential bias. Thus, this project aims to classify and generate a list of potential job applicants by analyzing various attributes of their LinkedIn accounts, such as title, location, skills, education, language, certification, and years of experience. This project implements the Naive Bayes algorithm as the classification algorithm. The classification is set to two categories: Eligible or Ineligible. The NB model achieved a commendable accuracy of 89.8%, indicating good performance in classifying potential job applicants. The system’s functionality based on the use case and usability tested by the Human Resources expert has been tested to evaluate its system requirements. The usability testing yields a score of 80% which indicates that the system is acceptable. The classification results are visualized, allowing users to identify eligible applicants efficiently. Thus, this project can help users find suitable applicants for the job. Future research can expand the criteria to include cultural fit and behavior traits.
format Book Section
author Ahmad, Nurul Atirah
Abu Samah, Khyrina Airin Fariza
Ahmad Kushairi, Nuwairah Aimi
author_facet Ahmad, Nurul Atirah
Abu Samah, Khyrina Airin Fariza
Ahmad Kushairi, Nuwairah Aimi
author_sort Ahmad, Nurul Atirah
title Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
title_short Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
title_full Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
title_fullStr Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
title_full_unstemmed Classification and visualization on eligibility rate of applicant’s LinkedIn account using Naïve Bayes / Nurul Atirah Ahmad, Khyrina Airin Fariza Abu Samah and Nuwairah Aimi Ahmad Kushairi
title_sort classification and visualization on eligibility rate of applicant’s linkedin account using naïve bayes / nurul atirah ahmad, khyrina airin fariza abu samah and nuwairah aimi ahmad kushairi
publisher Faculty of Computer and Mathematical Sciences
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/94125/1/94125.pdf
https://ir.uitm.edu.my/id/eprint/94125/
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