With the increasing amount of information on the Internet, recommender systems are becoming increasingly crucial in supporting people to find and explore relevant content. This is also true in the online recruitment space, with websites such as LinkedIn, Indeed.com, and Monster.com all using recommender systems. In online recruitment, it can often be challenging for companies to find suitable candidates with appropriate skills because of the huge volume of user profiles available. Identifying users which satisfy a range of different employer needs is also a difficult task. Thus, effective matching of user-profiles and jobs is becoming crucial for companies. This research project applies a wide range of recommendation techniques to the task of user profile recommendation. Extensive experiments are conducted on a large-scale real-world LinkedIn dataset to evaluate their performance, with the aim of identifying the most suitable approach in this particular recommendation scenario.
翻译:随着互联网上信息数量的不断增加,推荐人系统在支持人们查找和探索相关内容方面正变得日益重要。在线招聘空间也是如此,例如LinkedIn、Diver.com和Forest.com等网站都使用推荐人系统。在网上招聘中,公司往往难以找到具备适当技能的适当候选人,因为用户概况数量巨大。确定满足不同雇主需要的用户也是一项艰巨的任务。因此,有效匹配用户特征和工作对于公司来说至关重要。本研究项目对用户概况建议的任务应用了广泛的推荐技术。对大规模真实世界链接In数据集进行了广泛的实验,以评估其业绩,目的是确定这一特定建议情景中最合适的方法。