论文标题
视觉探索系统,用于使用随时间变化的图表分析年度招聘趋势
Visual Exploration System for Analyzing Trends in Annual Recruitment Using Time-varying Graphs
论文作者
论文摘要
新毕业生的年度招聘数据由人力资源专家(HR)手动分析,这意味着需要评估人力资源专家的招聘策略。每年,不同的申请人向公司发送职位申请。申请人属性(例如,英语技能或学术证书)之间的关系可用于分析多年数据的招聘趋势的变化。但是,大多数属性是不合同的,因此需要彻底的预处理。这种不均衡的数据阻碍了数据分析早期申请人之间关系的有效比较。因此,高度需要视觉探索系统从多年来申请人之间的关系概述中获得见解。在这项研究中,我们提出了用于实体关联(Panacea)可视化系统网络分析网络分析的偏振属性。提出的系统集成了随时间变化的图形模型和异质表格数据的动态图可视化。使用该系统,人力资源专家可以在多年内进行交互式检查潜在员工的两个属性之间的关系。此外,我们通过具有代表性的例子来证明灵丹妙药的可用性,以在现实世界中找到隐藏的趋势,然后描述整个Panacea开发中获得的人力资源专家的反馈。拟议的灵丹妙药系统使人力资源专家能够在视觉上探索新毕业生的年度招聘。
Annual recruitment data of new graduates are manually analyzed by human resources specialists (HR) in industries, which signifies the need to evaluate the recruitment strategy of HR specialists. Every year, different applicants send in job applications to companies. The relationships between applicants' attributes (e.g., English skill or academic credential) can be used to analyze the changes in recruitment trends across multiple years' data. However, most attributes are unnormalized and thus require thorough preprocessing. Such unnormalized data hinder the effective comparison of the relationship between applicants in the early stage of data analysis. Thus, a visual exploration system is highly needed to gain insight from the overview of the relationship between applicants across multiple years. In this study, we propose the Polarizing Attributes for Network Analysis of Correlation on Entities Association (Panacea) visualization system. The proposed system integrates a time-varying graph model and dynamic graph visualization for heterogeneous tabular data. Using this system, human resource specialists can interactively inspect the relationships between two attributes of prospective employees across multiple years. Further, we demonstrate the usability of Panacea with representative examples for finding hidden trends in real-world datasets and then describe HR specialists' feedback obtained throughout Panacea's development. The proposed Panacea system enables HR specialists to visually explore the annual recruitment of new graduates.