基于用户聚类的自适应工作推荐方法

Quoc-Dung Nguyen, Tin Huynh, Tu-Anh Nguyen-Hoang
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引用次数: 8

摘要

工作推荐系统的设计目的是建议一个与员工兴趣相关的工作排名列表。大多数现有的系统只使用一种方法对所有员工进行推荐,而一种特定的方法通常对一组员工足够好。因此,本研究提出了一种针对不同用户群体进行工作推荐的自适应解决方案。提出的方法是基于员工聚类的。首先,我们将员工分成不同的集群。然后,在经验评价的基础上,为每个用户群选择合适的方法。提出的方法包括CB-Plus、CF-jFilter和HyR-jFilter,分别适用于不同的三个集群。实证结果表明,本文提出的方法优于传统方法。
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Adaptive methods for job recommendation based on user clustering
Job recommender systems are designed to suggest a ranked list of jobs that could be associated with employee's interest. Most of existing systems use only one approach to make recommendation for all employees, while a specific method normally is good enough for a group of employees. Therefore, this study proposes an adaptive solution to make job recommendation for different groups of user. The proposed methods are based on employee clustering. Firstly, we group employees into different clusters. Then, we select a suitable method for each user cluster based on empirical evaluation. The proposed methods include CB-Plus, CF-jFilter and HyR-jFilter have applied for different three clusters. Empirical results show that our proposed methods is outperformed than traditional methods.
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