使用基于协同过滤的推荐系统向项目负责人推荐人力资源:gitHub案例研究

Shohreh Ajoudanian, M. Abadeh
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引用次数: 12

摘要

推荐系统(RSs)是信息过滤系统的一个重要子类。RSs试图预测用户在各种在线应用程序社区字段中对项目的评分或偏好。协同过滤(CF)是一种通过学习过去的用户-项目关系来预测用户区别的技术。然而,由于稀疏性问题是由于用户之间的关系数量不足造成的,因此很难感知到用户之间的可比较利益。本文提出了一种新的模糊c均值聚类方法,通过在聚类方法的初始中心定义中使用最稀疏子图检测算法来处理这种稀疏性问题。该方法利用模糊逻辑的适应性,在精度、召回率和f度量方面做出更好的个性化推荐。作者提出了一个案例研究,其中使用GitHub来展示作者方法的有效性。作者的模型可以为参与过类似项目的项目负责人推荐相关的人力资源。对比实验结果表明,该方法能有效地解决稀疏性缺点,并产生合适的覆盖率和推荐质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommending human resources to project leaders using a collaborative filtering-based recommender system: Case study of gitHub
Recommender systems (RSs) are a significant subclass of the information filtering system. RSs seek to predict the rating or preference that a user would give to an item in various online application community fields. Collaborative filtering (CF) is a technique which predicts user distinctions by learning past user-item relationships. However, it is hard to perceive the comparable interests between customers in light of the fact that the sparsity problem is caused by the deficient number of the relationship between users. It is a challenge which limited the ease of use of CF. This paper proposes a novel fuzzy C-means clustering approach which is used to deal with this sparsity problem by utilising a sparsest sub-graph detection algorithm in defining initial centres of the clustering method. The approach uses adaptability of fuzzy logic to make better personalised recommendations in terms of precision, recall and F-measure. The authors present a case study where GitHub is used to show the effectiveness of authors’ approach. Authors’ model can recommend relevant human resources (HR) to project leaders who have participated in similar projects. The comparative experiment results show that the planned approach will effectively solve the sparseness drawback and produce suitable coverage rate and recommendation quality.
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