Taxonomy-based job recommender systems on Facebook and LinkedIn profiles

M. Diaby, E. Viennet
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引用次数: 30

Abstract

This paper presents taxonomy-based recommender systems that propose relevant jobs to Facebook and LinkedIn users; they are being developed by Work4, a San Francisco-based software company and the Global Leader in Social and Mobile Recruiting that offers Facebook recruitment solutions; to use its applications, Facebook or LinkedIn users explicitly grant access to some parts of their data, and they are presented with the jobs whose descriptions are matching their profiles the most. In this paper, we use the O*NET-SOC taxonomy, a taxonomy that defines the set of occupations across the world of work, to develop a new taxonomy-based vector model for social network users and job descriptions suited to the task of job recommendation; we propose two similarity functions based on the AND and OR fuzzy logic's operators, suited to the proposed vector model. We compare the performance of our proposed vector model to the TF-IDF model using our proposed similarity functions and the classic heuristic measures; the results show that the taxonomy-based vector model outperforms the TF-IDF model. We then use SVMs (Support Vector Machines) with a mechanism to handle unbalanced datasets, to learn similarity functions from our data; the learnt models yield better results than heuristic similarity measures. The comparison of our methods to two methods of the literature (a matrix factorization method and the Collaborative Topic Regression) shows that our best method yields better results than those two methods in terms of AUC. The proposed taxonomy-based vector model leads to an efficient dimensionality reduction method in the task of job recommendation.
Facebook和LinkedIn上基于分类的工作推荐系统
本文提出了基于分类的推荐系统,向Facebook和LinkedIn用户推荐相关的工作;它们是由总部位于旧金山的软件公司Work4开发的,该公司是社交和移动招聘领域的全球领导者,为Facebook提供招聘解决方案;为了使用其应用程序,Facebook或LinkedIn的用户会明确授予访问其部分数据的权限,并向他们展示与他们的个人资料最匹配的职位描述。在本文中,我们使用O*NET-SOC分类法(一种定义工作世界中职业集合的分类法)为社交网络用户和适合工作推荐任务的职位描述开发了一个新的基于分类法的向量模型;我们提出了两个基于与和或模糊逻辑算子的相似函数,适合于所提出的向量模型。我们使用我们提出的相似函数和经典启发式度量比较了我们提出的向量模型与TF-IDF模型的性能;结果表明,基于分类的向量模型优于TF-IDF模型。然后,我们使用带有处理不平衡数据集机制的svm(支持向量机),从我们的数据中学习相似函数;学习到的模型比启发式相似度量产生更好的结果。将我们的方法与文献中的两种方法(矩阵分解方法和协同主题回归)进行比较表明,我们的最佳方法在AUC方面比这两种方法产生更好的结果。所提出的基于分类的向量模型为工作推荐任务提供了一种有效的降维方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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