Toward an Approach for Job Recommender System: Leveraging Hybrid Techniques

dc.contributor.authorKhider, Hadjer
dc.contributor.authorMeziane, Abdelkrim
dc.contributor.authorHammoudi, Slimane
dc.date.accessioned2024-12-22T13:49:15Z
dc.date.available2024-12-22T13:49:15Z
dc.date.issued2024-11
dc.description.abstractThe rapid evolution of the job market, driven by digitalization and changing business environment dynamics, requires the development of sufficient job recommender systems. A significant number of challenges are facing those job seekers on LinkedIn professional social network. These LinkedIn users are seeking job-maker proposals that align with their business needs. Supporting these job seekers is a real challenge. In order to address this deficiency, we propose a methodology for job recommender systems on the professional social network LinkedIn, based on the user profiles on that platform. This paper presents a user-centric design approach and recommendation process for jobs based on the social profile of the LinkedIn users. The proposed approach to job recommendation combines hybrid techniques, integrating collaborative filtering, content-based filtering, context aware recommendation. In this paper, we introduce a user-centric and interactive framework that enables job seekers to interact with our Job Recommender System to provide the most relevant and valuable recommendations. The proposed framework is designed to addressing common challenges in the field; this approach aims to enhance recommendation accuracy and user satisfaction.
dc.identifier.isrnISRN DSISM/RR-24-0000015--DZ
dc.identifier.urihttps://dl.cerist.dz/handle/CERIST/1047
dc.publisherCERIST
dc.relation.ispartofRapports de recherche internes
dc.relation.placeAlger
dc.structureIntégration des systèmes d'information
dc.subjectLinkedIn profile
dc.subjectSkills
dc.subjectDigitalization
dc.subjectJob seeker
dc.subjectJob makers
dc.titleToward an Approach for Job Recommender System: Leveraging Hybrid Techniques
dc.typeTechnical Report

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