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

Muhammad B. A. Joolfoo, Radhika Dhurmoo, R. Jugurnauth
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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 paper seeks to address a very important issue on the recruitment process which is about matching jobs seekers with jobs offers. These days, the coordinating procedure between the candidate and the activity offers 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. The hybrid system is composed of Content-Based filtering as well as Knowledge-based Approach which will be has been coded using the Python language. Precise Recommender Systems are very important nowadays.
基于混合系统的求职推荐系统设计
总的来说,一边找工作,一边查看招聘地点的招聘职位清单,这确实需要花费大量的时间和金钱,这是一件令人恼火的事情,尽管大多数时候这些工作并不总是适合用户,或者用户不满意。通过这样做,招聘人员浪费时间来确定他们是否符合条件。本文旨在解决招聘过程中一个非常重要的问题,即求职者与工作机会的匹配。如今,候选人和活动提供方之间的协调程序是组织需要处理的严重问题之一。对公司来说,列出候选人名单和筛选简历是一项耗时的工作,尤其是当一个职位收到的80%到90%的简历都是不合格的。采用协作预测算法,设计并提出了一种适用于求职和在线招聘网站的混合个性化推荐系统,以适应冷启动问题。该混合系统由基于内容的过滤和基于知识的过滤两部分组成,并将使用Python语言进行编码。如今,精确的推荐系统非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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