基于多线索语义信息的专家评价

Jun Wang, Kush R. Varshney, A. Mojsilovic, DongPing Fang, John H. Bauer
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引用次数: 4

摘要

评估和管理知识和服务行业员工的专业知识至关重要,因为人力资本是公司之间的关键区别。此外,职业社交网络正变得越来越流行。除了知名的公共专业社交网站Linked In外,企业社交网络现在也被广泛应用于企业和公司内部。在本文中,我们通过挖掘企业和社会数据中的多个线索来解决关键的劳动力分析问题,即自动评估员工的技能。特别是,我们将员工专业知识的评估视为矩阵补全问题,其中行表示单个员工,列表示单个技能。关于员工专业技能的多重线索来自于我们对公司现有技能评估过程的数据整合,员工的社交网络和社交媒体活动,以及技能的语义相似性。评估结果作为二值分类推荐进行评估。广泛的实证研究使用了来自一家大型跨国财富500强公司的真实世界数据集,证实了多线索分析在提高技能评估的覆盖面和准确性方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expertise assessment with multi-cue semantic information
Assessing and managing the expertise of employees in knowledge and service industries is critical because human capital is the key differentiator among companies. Moreover, professional social networks are becoming increasingly popular. Besides the well-known public professional social network site Linked In, enterprise social networks are also now being widely used inside corporations and companies. In this paper, we address the critical workforce analytics problem of automatically assessing employees' skills by mining multiple cues found in enterprise and social data. In particular, we treat the assessment of employees' expertise as a matrix completion problem, where the rows represent individual employees and the columns represent individual skills. The multiple cues about employee expertise come from data we integrate on the existing skill assessment process within the company, the social networking and social media activity of the employees, and the semantic similarity of skills. Assessment results are evaluated as a binary classification recommendation. Extensive empirical study using a real-world data set from a large multinational Fortune 500 corporation corroborates the effectiveness of multi-cue analytics to improve the coverage and accuracy of skill assessment.
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