Design of a Recommender System (RS) for Job Searching Using Hybrid System

Authors

  • Muhammad Bin Abubakr Joolfoo Department of Electrical and Electronic Engineering, University of Mauritius, Reduit, 80837, Mauritius
  • Radhika Dhurmoo Department of Electrical and Electronic Engineering, University of Mauritius, Reduit, 80837, Mauritius
  • Rameshwar Ashwin Jugurnauth Department of Electrical and Electronic Engineering, University of Mauritius, Reduit, 80837, Mauritius

Keywords:

content-based filtering, knowledge-based approach, hybrid-based approach component

Abstract

By and large, searching for work while examining a rundown of enlisting positions on enrollment locales, which truly cost a lot of time and cash is an irritating thing to do Although most of the time those jobs are not always suitable with users, or users are not satisfy. By doing this, recruiters waste their time by making sure that they are qualify or not. This thesis seeks to address a very important issue on the recruitment process which is about matching jobs seekers with jobs o?ers. These days, the coordinating procedure between the candidate and the activity o?ers is one of the serious issue’s organizations need to deal with. Short listing candidates and screening resumes are long time-consuming tasks for the company, especially when 80 percent to 90 percent of the resumes received for a role are unquailed. We have designed and proposed a hybrid personalized recommender system used for job seeking and online recruiting websites adapted to the cold start problem using a collaborating predictive algorithm.

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Published

2020-08-06

How to Cite

Joolfoo, M. B. A. ., Dhurmoo, R. ., & Jugurnauth, R. A. . (2020). Design of a Recommender System (RS) for Job Searching Using Hybrid System. International Journal of Sciences: Basic and Applied Research (IJSBAR), 53(2), 30–45. Retrieved from https://gssrr.org/index.php/JournalOfBasicAndApplied/article/view/11529

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