Job Recommendation based on Job Profile Clustering and Job Seeker Behavior
D. Mhamdi, Reda Moulouki, M. Y. El Ghoumari, Mohamed Azzouazi, Laila Moussaid
Abstract
This article presents a recommender system that aims to help job seekers to find suitable jobs. First, job offers are collected from job search websites then they are prepared to extract meaningful attributes such as job titles and technical skills. Job offers with common features are grouped into clusters. As job seeker like one job belonging to a cluster, he will probably find other jobs in that cluster that he will like as well. A list of top n recommendations is suggested after matching data from job clusters and job seeker behavior, which consists on user interactions such as applications, likes and rating.
Topics & Concepts
Computer scienceMatching (statistics)Job analysisSeekersCluster analysisRecommender systemCluster (spacecraft)Job attitudeJob performanceInformation retrievalArtificial intelligenceJob satisfactionPsychologySocial psychologyMathematicsStatisticsLawProgramming languagePolitical scienceRecommender Systems and TechniquesDistributed and Parallel Computing SystemsAdvanced Bandit Algorithms Research