利用机器学习程序和基于地理区域的推荐框架预测就业建议

Binny Parida, Prashanta KumarPatra, Sthitapragyan Mohanty
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引用次数: 7

摘要

近年来,随着互联网使用率的提高,社交网络的增长速度也越来越快。本文的研究重点是求职门户网站。本文的研究目的是通过推荐框架从网站中提取能力,并向职位描述与个人资料最协调的候选人推荐。本文还简要介绍了推荐框架,并讨论了该框架的不同类别。从一开始,信息被清除为多余的空间和重复的肮脏信息。然后根据目标申请人的偏好向他们提出工作建议。它使用了不同的机器学习过程,结果表明随机森林分类器(RFC)在不同的过程中给出了最值得注意的期望精度。最后,利用优化技术得到最精确的结果。阐述了推荐框架在职业定位中的优势。基于地理区域的推荐框架被用来找到组织的位置,可以帮助理想的申请人到达他们的目的地。本研究表明,工作推荐系统的使用可以帮助求职者更好地推荐合适的工作。
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Prediction of recommendations for employment utilizing machine learning procedures and geo-area based recommender framework

With increment in the utilization of Internet, the pace of increment of social networks is getting ubiquitous in recent years. This paper focuses on the job portal websites. The research objective of this paper is that the recommender framework takes the abilities from the website and makes suggestion to the candidates with the jobs whose descriptions are coordinating with their profiles the most. This paper additionally presents a short presentation on recommender framework and talks about different categories of this framework. From the start, information is cleaned by expelling the filthy information as extra space and duplicates. Then the job recommendations are made to the target applicants on the basis of their preferences. It utilizes different Machine Learning procedures which results show that Random Forest Classifier (RFC) gives the most noteworthy expectation accuracy when contrasted with different procedures. Finally, the optimization technique is utilized to get the most exact outcome. The advantage of recommender framework in career orientation is expressed. Geo-area based recommendation framework is utilized to find the organization's position which can assist the ideal applicants with reaching their destination. This examination shows that the utilization of job recommender system can assist with improving the recommendation of appropriate employment for work searchers.

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