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Help me find a job: A graph-based approach for job recommendation at scale

机译:帮我找到工作:基于图表的大规模推荐工作方法

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Online job boards are one of the central components of modern recruitment industry. With millions of candidates browsing through job postings everyday, the need for accurate, effective, meaningful, and transparent job recommendations is apparent more than ever. While recommendation systems are successfully advancing in variety of online domains by creating social and commercial value, the job recommendation domain is less explored. Existing systems are mostly focused on content analysis of resumes and job descriptions, relying heavily on the accuracy and coverage of the semantic analysis and modeling of the content in which case, they end up usually suffering from rigidity and the lack of implicit semantic relations that are uncovered from users' behavior and could be captured by Collaborative Filtering (CF) methods. Few works which utilize CF do not address the scalability challenges of real-world systems and the problem of cold-start. In this paper, we propose a scalable item-based recommendation system for online job recommendations. Our approach overcomes the major challenges of sparsity and scalability by leveraging a directed graph of jobs connected by multi-edges representing various behavioral and contextual similarity signals. The short lived nature of the items (jobs) in the system and the rapid rate in which new users and jobs enter the system make the cold-start a serious problem hindering CF methods. We address this problem by harnessing the power of deep learning in addition to user behavior to serve hybrid recommendations. Our technique has been leveraged by CareerBuilder.com which is one of the largest job boards in the world to generate high-quality recommendations for millions of users.
机译:在线工作委员会是现代招聘行业的主要组成部分之一。每天都有数以百万计的求职者浏览职位发布,因此比以往任何时候都更加需要准确,有效,有意义和透明的职位推荐。虽然推荐系统通过创造社会和商业价值在各种在线领域中都得到了成功的推进,但工作推荐领域却鲜为人知。现有系统主要集中在简历和职位描述的内容分析上,严重依赖于语义分析的准确性和覆盖范围以及内容的建模,在这种情况下,它们通常遭受僵化和缺乏隐式语义关系的困扰。从用户的行为中发现,并可以通过协作过滤(CF)方法捕获。很少有利用CF的作品不能解决现实系统的可扩展性挑战和冷启动问题。在本文中,我们提出了一种可扩展的基于项目的在线求职推荐系统。我们的方法通过利用由代表各种行为和上下文相似性信号的多边连接的作业的有向图,克服了稀疏性和可伸缩性的主要挑战。系统中项目(工作)的寿命短暂,新用户和工作进入系统的速度很快,这使得冷启动成为阻碍CF方法的严重问题。我们通过利用深度学习的力量以及用户行为来为混合建议提供服务,从而解决了这个问题。 CareerBuilder.com利用了我们的技术,CareerBuilder.com是世界上最大的工作委员会之一,可以为数百万用户提供高质量的建议。

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